SlideShare una empresa de Scribd logo
1 de 14
Descargar para leer sin conexión
APT Financial Consultants


                                              AUDIT SAMPLING

1. Guiding standard ISA 530, Audit Sampling and Other Selective Testing procedures.
2.   Audit sampling can be defined as an application of audit procedures to less than 100% of items within an
     account balance or class of transactions such that all sampling units have a chance of selection. This will enable
     the auditor to obtain and evaluate audit evidence about some characteristic of the items selected in order to form
     or assist in forming a conclusion concerning the population from which the sample is drawn. Audit sampling
     can use either a statistical or a non-statistical approach.

3. Formalized audit sampling procedures have been developed and become commonplace in the
   majority of audit firms. The use of audit sampling, on all audit assignments, offers
   innumerable benefits to all auditors. These include:

     •    developing a consistent approach to audit areas;
     •    providing a framework within which sufficient audit evidence is obtained;
     •    forcing clarification of audit thinking in determining how the audit objectives will be
          met;
     •    minimising the risk of over-auditing; and
     •    facilitating more expeditious review of working papers.

3.0 Sampling risk is the risk that the sample is not representative of the population from which it
is drawn and thus the auditor’s conclusion is different to that which would be reached if the
whole population was examined.
    This may result in:
    (a)     ‘The risk of incorrect rejection’ (also called Alpha risk) which arises when the sample
        indicates a higher level of errors than is actually the case. This situation is usually
        resolved by additional audit work being performed. This risk affects audit efficiency but
        should not affect the validity of the resulting audit conclusion;

     (b) ‘The risk of incorrect acceptance’ (also called Beta risk) when material error is not
         detected in a population because the sample failed to select sufficient items containing
         errors. This risk, which affects audit effectiveness, can be quantified using statistical
         sampling techniques. Although it is possible that an unqualified auditors’ report could be
         issued inappropriately, such errors should be detected by other complementary audit
         procedures (assuming that the sample size is appropriate to the level of detection risk).

4.0 ISA 530 defines non-sampling risk as the risk, which “arises from factors that cause the
    auditor to reach an erroneous conclusion for any reason not related to the size of the sample”.
    Thus non-sampling risk can also arise, for example, if the auditor fails to recognize an error
    in an individual item in a sample. The auditor seeks to minimize the risk of erroneous
    conclusions by proper planning, supervision and review.
    Examples of sources of non-sampling risk include:

     •            Failure to investigate significant fluctuations in relationships when placing
          reliance on analytical procedures; and




Sako Mayrick, 2008                                                                                              Page 1 
APT Financial Consultants

      •          Placing reliance on management representations as a substitute for other audit
          evidence that could reasonably be expected to be available.


5.0       When planning the audit procedures to be adopted, the decision to sample account
          balances and transactions is influenced by:

          •     materiality and the number of items in the population;
          •     inherent risk (of errors arising);
          •     relevance and reliability of evidence available through non-sampling procedures; and
          •     costs and time involved.

             To obtain the overall level of assurance required, a cost-effective combination of
             sampling and non-sampling procedures should be determined. Audit sampling
             procedures          are           effected          in          four           stages:
             1.Sample                                                                      design;
             2.Sample                                                                    selection;
             3.     testing    (i.e.,    performing       the       audit     procedure);      and
             4.evaluation.
          Sample design
          Sample design, which may be set out in a sample plan, includes consideration of:

          •     Audit objective(s) of the test;
          •     Population from which the sample is to be drawn;
          •     Sampling unit;
          •     Results or conditions that will be regarded as errors or deviations;
          •     Sample size.

          In normal sampling techniques the following steps are followed.

          (a)         Identification of the population
          (b)         Definition of an error
          (c)         Computation the appropriate sample size
          (d)         Evaluation of the results of sample.

          Reasons for sampling:

                Cost benefit of 100% and sample.
                Size of the firm’s transactions
                Produce high level of assurance in respect of completeness.


Definition of key terms: -
Population – is the entire set of data from which the auditors wish to sample in order to reach a
conclusion.



Sako Mayrick, 2008                                                                             Page 2 
APT Financial Consultants

Audit Sampling – Is application of audit procedures (e.g.. Compliance or substantive tests) to
less than 100% of the items within an account balance or class of transactions to enable auditors
to obtain and evaluate evidence about some characteristics of the items. Selected in order to
form or assist in forming a conclusion concerning the population, which makes up that account
balance or class of transaction.
Sampling units – Are individual items that make up the population.
Error – Is an unintentional mistake in the financial statements.
Precision – Is the measure of how much the conclusion drawn by the auditor from the results of
testing a particular characteristic of a sample of items difference from known population
characteristics at a given level of sampling risk.
Tolerable error – is the maximum error in the population that auditors are willing to accept and
still conclude that the audit objective have been achieved.
Sampling risk – Is the risk that the auditors conclusion, based on a sample, may be different
from the conclusion that would be reached of the entire population was subject to the same audit
procedure: -
Non- Sampling risk – Is the risk that the auditors might use inappropriate procedures or might
mis interpret evidence and thus fail to recognize an error.

Stratification—The process of dividing a population into subpopulations, each of which is a
group of sampling units which have similar characteristics (often monetary value).

Sampling Decision tree

                         Judgmental       - Proportion- Estimation
                         (Non-statistical)              Sampling for Discovery
                                                        Attributes sampling
                                                        Acceptance sampling
Sampling

                         Random                Estimation sampling of
                         (Statistical) - Value -Variables
                                               Monetary unit sampling.

Characteristics of acceptable audit sample:

               Sufficient large population (e.g. more than 100).
               Anticipated error rate must be reasonably low.
               Population should be representative of all major transactions.
               Choice of sample population should be directly related to the test objective.
               The population tested should be reasonably homogeneous both in the type of balance
               and origin. E.g. Low-value and high value transactions.
               The population should be representative of the time period under review. E.g. not
               only for first 3 months.
               Every item in the population should stand an equal chance of selection.




Sako Mayrick, 2008                                                                         Page 3 
APT Financial Consultants


Some testing procedures do not involve sampling example:

               Transaction and balances which, though few in number are of great significance in
               terms of size: e.g. land and building and extra ordinary/exceptional items.
               Non-homogeneous population where sorting will have to take place before sampling
               can be attempted.
               Small population where statistical, theory will create unacceptable margins of error.
               Testing 100% of items in a population.
               analytical procedures;
               Tests in total (also called proofs in total or logic tests) i.e., calculations of
               reasonableness based on independently verified data;
               ‘Walk-through’ tests, i.e., tracing a few transactions in order to obtain knowledge
               and understanding of the design and operation of accounting and internal control
               systems; and
               Other selective testing of specific items, e.g., high-value, key and unusual (but not
               representative) items.

Sample Selection Methods
The principal methods of selecting samples are as follows:
(a) Use of a computerized random number generator (through CAATs) or random number tables.
(b) Systematic selection, in which the number of sampling units in the population is divided by
the sample size to give a sampling interval, for example 50, and having determined a starting
point within the first 50, each 50th sampling unit thereafter is selected. Although the starting
point may be determined haphazardly, the sample is more likely to be truly random if it is
determined by use of a computerized random number generator or random number tables. When
using systematic selection, the auditor would need to determine that sampling units within the
population are not structured in such a way that the sampling interval corresponds with a
particular pattern in the population.
(c) Haphazard selection, in which the auditor selects the sample without following a structured
technique. Although no structured technique is used, the auditor would nonetheless avoid any
conscious bias or predictability (for example, avoiding difficult to locate items, or always
choosing or avoiding the first or last entries on a page) and thus attempt to ensure that all items
in the population have a chance of selection. Haphazard selection is not appropriate when using
statistical sampling.
(d) Block selection involves selecting a block(s) of contiguous items from within the population.
Block selection cannot ordinarily be used in audit sampling because most populations are
structured such that items in a sequence can be expected to have similar characteristics to each
other, but different characteristics from items elsewhere in the population. Although in some
circumstances it may be an appropriate audit procedure to examine a block of items, it would
rarely be an appropriate sample selection technique when the auditor intends to draw valid
inferences about the entire population based on the sample.




Sako Mayrick, 2008                                                                            Page 4 
APT Financial Consultants


Approaches to sampling:

(a)       Statistical sampling – an approach to sampling which requires the use of random
          selection and uses probability theory to determine the sample size, to evaluate on
          quantitative basis the sample results and to measure the sampling risk.

(b)       Non statistical sampling (Judgement sampling): is any approach which does not fulfil all
          the conditions set out alongside for statistical sampling.

The main stages in the sampling process are:

          (i)         Determining objectives and population
          (ii)        Determining sample size
          (iii)       Choosing method of sample selection
          (iv)        Analysing the results and projecting errors.

Main approaches to audit sampling are

          (i)         Attribute sampling (numerical) – is a aimed at detecting what proportion of a
                      population either has or lacks, a specific characteristic or attribute.
          .
          (ii)    Variable sampling – is aimed at ascertaining (monetary) The monetary
                  value/extent of an error, be it over or understatement.
          The attribute sampling is more appropriate to compliance testing and variable sampling
          is better invited to substantive testing.

Attribute (numerical) sampling:
   Each error or deviation from a prescribed control procedures in treated (or weighed) equally
   despite the fact the monetary values of the errors may be very different.
   The results of an attribute sample in compliance content is normally expressed in terms of
   “confidence level” or “precision”

The determination of sample size requires judgement of:

          •       assurance required;
          •       tolerable and expected error (or deviation rate); and
          •       stratification.

Absolute assurance cannot be achieved through sampling procedures. The lower the assurance
required, the smaller the required sample size. The tolerable error (or deviation rate) is also
called precision. It is the maximum error (or deviation rate) that can be accepted to conclude that
the audit objective has been achieved. (The combined tolerable error for all audit tests is
sometimes called gauge.)
For substantive tests, precision may be expressed as a monetary amount (which is less than
overall materiality) or a percentage of population value. For tests of control, precision is the



Sako Mayrick, 2008                                                                            Page 5 
APT Financial Consultants

maximum rate of failure of an internal control that can be accepted in order to place reliance on it
(and is therefore likely to be small).
Errors increase the imprecision of results from sampling. Therefore, if they are expected, a larger
sample size is required.
         In attribute sampling:
                  Sample size = Reliability factor (R-factor)
                                        Precision.
Sampling risk is frequently expressed as a %. For example, 5% means that there is a 1 in 20
chance of material error going undetected (this is the risk accepted by many audit firms for any
specific audit tests). Risk can also be expressed in terms of confidence levels (assurance
required) and reliability factors.
A confidence level is the degree of assurance that material error does not exist; it is the converse
of risk.
Reliability (R-) factors are derived from the Poisson sampling distribution (a distribution of ‘rare
events’) and are related to risk percentages as shown in Figure 1. Note the ‘inverse’ nature of the
relationship between R-factors and risk and that a confidence level is the mathematical
complement of risk.

The R – factor is taken from statistical tables such as this one: -

                      Confidence
                                        Risk         R- factors R-factor one
                      Level/assurance
                                        level        No. errors error
                      required
                      99%               1%           4.6              6.61
                      95%               5%           3.0              4.75
                      90%               10%          2.3              3.89
                      85%               15%          1.9              3.38
                      80%               20%          1.6              3.0
                      70%               30%          1.2              2.44


The reliability factor is related to the amount of assurance the auditors wishes to draw from the
test.
Example:




Sako Mayrick, 2008                                                                            Page 6 
APT Financial Consultants




Sako Mayrick, 2008                        Page 7 
APT Financial Consultants


Example 2




QUESTION 1:
Calculate the sample size, which should be, used in test control in the following circumstances: -

(a)       No. Errors is anticipated in the sample; accept 5% risk that four or more items in 100 are
          incorrect in the population.

(b)     One error anticipated in the sample; accept 1-% risk that three or more items in every 100
        are incorrect in the population solution.
(See class notes for answers)

An auditor is planning compliance tests and describes that he will accept the particular
population as correct as long as he runs no more than 5% risk that 2 or more items, in every 100
are incorrect. The degree of precision required is +-2%.
(i)     If no errors are anticipated the sample
  size would be;
(ii)    If one error is anticipated the sample size rises to.


Sako Mayrick, 2008                                                                            Page 8 
APT Financial Consultants

(iii)  If in first example the auditor were prepared to accept higher error rate (say 4 items per
       100) but no more) the sample size would fall:-
( See Class notes for this)

In practice some accounting firm find it preferable to offer their audit staff a set of approach to
statistical sampling for attributes; this minimizes both cost and the risk of variation between
auditors and audit clients.
The firms are confident that the samples size they recommended are representative of average
sample sizes which would be obtained by using the above attribute sample size formula.
The higher the sample size the higher the degree of reliance,

Other forms of attribute sampling.

Acceptance sampling: -
The number of errors found in the sample will determine whether or not a population is accepted
or rejected. E.g.: if error rate X% or less at a given confidence level the auditor may decide to
accept the entire population. If the error rate in the sample rises above X%
Then the population may be rejected as unreliable.

Discovery sampling:-
Called exploratory sampling is a secreening device for punching out populations which require
further investigation”. The method involves lying to discover of errors are occurring at over an
acceptable rate. Thus the auditor would sample until such an error was found.
Precision (materiality is determined by the auditor prior to the Commencement of sampling. R-
factors are arrived at as a result of compliance testing procedures. The value of population is
given in draft financial statements which the client prepares.

Variable Sampling and Monetary Unit Sampling ( MUS)
Variable sampling have difficulty in dealing with understatements of account balances.Why?
They can only test what is actually there – tests for understatements are generally carried out at
the compliance or attribute sampling stage.

Invoices which not exists cannot be tested at substantive stage and thus a balances which are
materially understated will stand a lower chance of being selected for audit testing at the
substantive testing stage.
MUS gives a conclusion based on monetary amounts. Not rates of occurrence. It does this by
defining each Shs.1 of the population as a sampling unit of Shs.1. and an individual balance of
Tshs.300 is 300 sampling units of Shs.300.
From attribute sampling scheme:

          Sample size = Reliability R- factor
                            Precision

The MUS sample size formula is slightly different: rather than stating precision as a rate of
occurrence; it is restated in monetary.



Sako Mayrick, 2008                                                                           Page 9 
APT Financial Consultants


Substantive procedures: variable sampling,

Variable sampling is concerned with sampling units which can take a value within a continuous
range of possible values and is used to provide conclusions as to the monetary value of a
population.

The auditors can use it to.
(a)    Estimate the value of a population by extrapolating statistically the value of a
       representative sample items drawn from population.
(b)    Determine the accuracy of a population that has already been ascribed a value
       (generally described as “hypothesis” testing)
       -The variable (Monetary) sampling is most suited for substantive testing situation.
    -The true variable sampling involves the estimation of both the number of units m a
               population and the standard deviation of a population a population. The above
               might be too involving to construction of pilot (or preliminary) samples.

Monetary units sampling:

It is a technique developed to avoid traditional variables sampling approach and its time –
consuming methodology – there is a no need for the auditor to be aware of either the number of
units in the population or the standard deviation of those units.

The MUS focuses on materiality, the R-factor reliability and the total value stated in the
financial statements.

Terms as follows;
              Precision (as in altribute       =      Tolerable error
              Sampling formula above                  Population value

                      Therefore:

               Sample size         =   Reliability factor x population value
                                                   Tolerable error

               Sampling interval =     Population value or Tolerable error
                                       Sample size         Reliability factor


Example:

Using the information in question 1(a), show the selection of sample items, given that.

(a)       Tolerable error         =      2,000,000
(b)       Population value        =      Shs.50m.
(c)       Random start item 100,000
(d)       The first ten ledger balances on the ledger m question are: Shs.250,000, 272,500;

Sako Mayrick, 2008                                                                            Page 10 
APT Financial Consultants

          Shs,    751,000;     Shs.84,    500;          Shs99,000;   Shs,    172,000;Shs.982,100;
          227,190,Shs.35,900:shs.486,200.

          ANSWER:

          Sample size =           ( See class notes)
          Sampling internal       = (See class notes)

          The sample will be selected as follows:

                      Ladger    Value               Cumulative       Selected
                      Balance                       Value            Amount
                      Shs.      Shs.                Shs.             Shs.
                      1.        250,000             250,000          100,000
                      2.        272,500             522,500          -
                      3.        751,000             1,273,800        760,666
                      4.        84,500              1,358,000        -
                      5.        99,000              1,457,000        1,433,320
                      6.        17,200              1,474,200        -
                      7.        982,100             2,456,300        2,099,980
                      8.        2,271,900           4,728,200        2,766,640
                      9.        35,900              4.764,100        -
                      10        486,200             5,250,300        4,766,620
                      Etc.      Etc.                Etc.             Etc.


The sample in the above results will not be as great as 75 balance of item 8 on ledger (and other
balances of similar value will have the same effect0. This demonstrates one advantage of mus in
that all items larger than the sampling internal will be selected. This selection of larger items
gives a weighting, which makes a reduction in sample size acceptable.

Example 2:

An auditor, who is willing to tolerable errors tolling Shs.1, 000,000 in a population value of
Shs.20m. is working to precision of 5%. Substituting this into attribute sampling formula we get.

Sample size           = Reliability factor x population value
                               Tolerable error
To extend the above sample, suppose the auditor has divided, on the basis of a full review of
inherent risk control risk and analytical review risk that the reliability factor should be 3.0. The
sample size will thus be.

Sample size = 3.0 X 20,000,000 = 60 items
                  1,000,000
Once the sample size has been calculated the auditor proceeds to actual Choice of sample items.


Sako Mayrick, 2008                                                                           Page 11 
APT Financial Consultants

The first step in this process is to compute the sampling interval.

Sampling Interval = Population value = Shs.335, 330
                     Sample size
      Or
                    = Tolerable error = 10,000,000
                       Reliability factor        3.0

                                              = 333,330

As noted above, each Shs.1 of population is regarded as a separate sampling unit. Thus auditor
having selected a random starting point in (say) a list of ledger balances needs to select every
333,330rd sampling unit encountered, as the population is cumulatively added from zero at the
random staring point. Obviously every 333,330rd sampling unit is a part of particular debtor
balance. That particular balance is then selected for testing. This “systematic selection of
sample items is demonstrated below.

Sampling Internal 333,330/=.

Ledger           balance Value                 Cumulative       Value Random        Start
/Item                    Shs.                  Shs.                   Shs.160,       000
                                                                      Selected Shs.
1.                       100,000                100,000               -
2.                       185,000                285,000               160,000
3.                       200,000                 485,000              -
4.                         60,000                545,000              493,330
5.                         65,000                610,000              -
6.                       460,000               1,070,000              826,660
7.                         96,000              1,166,000              1,159,990
8.                       164,000               1,330,000              -
9.                       1,267,500             2,597,500              1,493,320
10.                         27,259               288,000              18,266,650
-                        -                     -                        2,159,980
-                        -                     -                        2,493,310
-                        -                     -                        2,826,640
Etc.                     Etc.                  Etc.                   Etc.


In the example of systematic selection given immediately above the auditor will fail to achieve
the desired sample size of….items because of item 9 and any other items of a similar magnitude
which may occur later in cumulative addition process.

“Not only MUS gives higher – value items a greater chance of selection but it will also be noted
that all items whose value in is excess of the sampling internal are guaranteed to be selected. In
fact, such items. Could be selected more than once of two if course they need only be tested
once (on the assumption that high-value items have not been preselected and separately

Sako Mayrick, 2008                                                                          Page 12 
APT Financial Consultants

evaluated). If balances larger than the sampling internal are present, the size of the sample
actually selected will be less than computed.

This shortfall is acceptable but should be reconciled to prove the accuracy of the sample by
reference to the number of items each 10% stratum item was selected.

Thus for example above, assuming that no further items exist which are equal to or more than
twice the sampling internal, the final number of items selected will be 57 (instead of 60) and the
reconciling balance will be three times that tem 9 was registered after initial selection.

Evaluation of MUS results
Where no errors are formed in the sample, then the “Prevision” achieved will be that predicted
in terms of “tolerable errors” by the auditors before the test was carried the conclusion that can
be drawn that the population from which the sample was drawn that the population from which
the sample was drawn was not overstated by more than the monetary precision specified here
(usually materiality).
-This conclusion cannot be drawn when errors are found.
-When an error is in item larger than the sampling interval, the auditors will be assured that the
absolute amount of error in this top “strata of balances is known, because all such items have
been examined in the test.

-When the error is found in an item is smaller than the sampling internal, then it will be
necessary to project the level of error on the rest of the population.

The projection has two aspects
(a) Estimating the probable error in the population
(b) Adjusting the value of each error by a prevision by a prevision gap widening factor to arrive
    at the upper error limit. (The purpose of this is to estimate the error that may not have been
    found because of the imprecision of the estimation technique).

STEPS:
(1)  Calculate the most likely error – sort the errors into over and under statements.
     E.g. in above example: suppose that there are three errors of over-statements.

                               Errors Item %error           Sampling       Expected
                               Shs. Value                   Internal       Value of error
                                                                           In sampling
                                                                           Internal
          Higher value items   13000 754000         -       666660                  13000
          Lower value items    123600 294800        8%      666660                 533330
                               15000 3000,000       5%      666660                 33330
          Most likely error                                                        99,660


Where an error is found in lower-value item (value of item & sampling internal), the error is
projected (or tamped) over the sampling internal (by Multiplying sampling internal by % error).

Sako Mayrick, 2008                                                                          Page 13 
APT Financial Consultants

Where the error is higher value item (value item) sampling internal) the error is the exact amount
of error in the sample
(ii)    Calculate the upper error limit:
        This involves “Precision gap widening.” The errors are ranked in % terms and a precision
        gap factor applied to them, based on the risk accepted.
        Error No: Prevision gap      To error Sampling Internal Precision
                  Widening factor (tempting                         gap widening
            1          0.15              8%       666660                    40000
            2          0.55            6%         6666660                   22000


          The user error limit is calculated as follows:
                                                                Shs:
          Sampling internal X reliability factor (666660 x 3)   2,000,000
          Most likely error                                     99660
          Prevision gap-widening                                62000
          Upper error limit                                     2,161,660

          The implication of this result is that there is 5% risk that the error in the population will
          exceed Shs. 2161,660.
          If the upper limit is greater than the tolerable errir; the following guideline is available.
          (a)     As the client to adjust for any specific errors identified.
          (b)     Reconsider such aspects of process as risk levels, tolerable error and sample size
                  greater care should be taken before original audit judgements are revised.
          (c)     Consider the need for further adjustments of account balances concerned, e.g.
                  additional bad debt’s provision.
          (d)     Consider the eventual form of the audit report – is qualification or disclaimer
                  required.




Sako Mayrick, 2008                                                                              Page 14 

Más contenido relacionado

La actualidad más candente

trade receivable and trade payable
trade receivable and trade payabletrade receivable and trade payable
trade receivable and trade payablestudent
 
| Accounting Cycle | Double Entry Accounting | Basic Accounting Equation | 8 ...
| Accounting Cycle | Double Entry Accounting | Basic Accounting Equation | 8 ...| Accounting Cycle | Double Entry Accounting | Basic Accounting Equation | 8 ...
| Accounting Cycle | Double Entry Accounting | Basic Accounting Equation | 8 ...Ahmad Hassan
 
Chapter audit report
Chapter audit reportChapter audit report
Chapter audit reportEasyStudy3
 
Audit Sampling for Tests of Details of Balances
Audit Sampling for Tests of Details of BalancesAudit Sampling for Tests of Details of Balances
Audit Sampling for Tests of Details of BalancesCarl Hebeler
 
Audit sampling
Audit samplingAudit sampling
Audit samplingzaur2009
 
Audit of property plant & equipment (PPE) and cash & cash equivalents (CCE)
Audit of property plant & equipment (PPE) and cash & cash equivalents (CCE)Audit of property plant & equipment (PPE) and cash & cash equivalents (CCE)
Audit of property plant & equipment (PPE) and cash & cash equivalents (CCE)MD ASADUZZAMAN
 
Auditing Chapter 2
Auditing Chapter 2Auditing Chapter 2
Auditing Chapter 2aaykhan
 
Analytical procedures presentation
Analytical procedures presentationAnalytical procedures presentation
Analytical procedures presentationDarryl Woolley
 
Financial Statements Audit
Financial Statements AuditFinancial Statements Audit
Financial Statements AuditSalih Islam
 

La actualidad más candente (20)

9. audit evidence
9. audit evidence9. audit evidence
9. audit evidence
 
trade receivable and trade payable
trade receivable and trade payabletrade receivable and trade payable
trade receivable and trade payable
 
Chapter 12 - Designing Substantive Procedures
Chapter 12 - Designing Substantive ProceduresChapter 12 - Designing Substantive Procedures
Chapter 12 - Designing Substantive Procedures
 
ISA 530 Audit Sampling
ISA 530 Audit SamplingISA 530 Audit Sampling
ISA 530 Audit Sampling
 
| Accounting Cycle | Double Entry Accounting | Basic Accounting Equation | 8 ...
| Accounting Cycle | Double Entry Accounting | Basic Accounting Equation | 8 ...| Accounting Cycle | Double Entry Accounting | Basic Accounting Equation | 8 ...
| Accounting Cycle | Double Entry Accounting | Basic Accounting Equation | 8 ...
 
Audit documentation
Audit documentationAudit documentation
Audit documentation
 
Audit of Cash Balances
Audit of Cash BalancesAudit of Cash Balances
Audit of Cash Balances
 
Chapter 11, Tests of Controls
Chapter 11, Tests of ControlsChapter 11, Tests of Controls
Chapter 11, Tests of Controls
 
Ch 13. substantive procedures
Ch 13. substantive proceduresCh 13. substantive procedures
Ch 13. substantive procedures
 
Chapter audit report
Chapter audit reportChapter audit report
Chapter audit report
 
Audit & Assurance
Audit & Assurance Audit & Assurance
Audit & Assurance
 
Audit Sampling for Tests of Details of Balances
Audit Sampling for Tests of Details of BalancesAudit Sampling for Tests of Details of Balances
Audit Sampling for Tests of Details of Balances
 
Audit sampling
Audit samplingAudit sampling
Audit sampling
 
Audit procedures
Audit proceduresAudit procedures
Audit procedures
 
Audit of property plant & equipment (PPE) and cash & cash equivalents (CCE)
Audit of property plant & equipment (PPE) and cash & cash equivalents (CCE)Audit of property plant & equipment (PPE) and cash & cash equivalents (CCE)
Audit of property plant & equipment (PPE) and cash & cash equivalents (CCE)
 
Adjusting Entries | Accounting
Adjusting Entries | AccountingAdjusting Entries | Accounting
Adjusting Entries | Accounting
 
Auditing Chapter 2
Auditing Chapter 2Auditing Chapter 2
Auditing Chapter 2
 
Chapter 3
Chapter 3Chapter 3
Chapter 3
 
Analytical procedures presentation
Analytical procedures presentationAnalytical procedures presentation
Analytical procedures presentation
 
Financial Statements Audit
Financial Statements AuditFinancial Statements Audit
Financial Statements Audit
 

Similar a Audit Sampling

Chapter 9 – homework
Chapter 9 – homeworkChapter 9 – homework
Chapter 9 – homeworkbagarza
 
T8 audit sampling
T8 audit samplingT8 audit sampling
T8 audit samplingnamninh
 
Auditing & Assurance Presentation
Auditing & Assurance PresentationAuditing & Assurance Presentation
Auditing & Assurance PresentationAugustin Bangalore
 
Final-Audit-Sampling.pdf
Final-Audit-Sampling.pdfFinal-Audit-Sampling.pdf
Final-Audit-Sampling.pdfssuser5945a3
 
Sampling concept
Sampling concept Sampling concept
Sampling concept Fayaz Ahmad
 
Data Analytics for Internal Auditors - Understanding Sampling
Data Analytics for Internal Auditors - Understanding SamplingData Analytics for Internal Auditors - Understanding Sampling
Data Analytics for Internal Auditors - Understanding SamplingJim Kaplan CIA CFE
 
Judgment, haphazard and statistical sampling for interanl auditing
Judgment, haphazard and statistical sampling for interanl auditingJudgment, haphazard and statistical sampling for interanl auditing
Judgment, haphazard and statistical sampling for interanl auditingMohammad Wahid Abdullah Khan
 
Sas 104 111 Impact On Auditors
Sas 104 111 Impact On Auditors Sas 104 111 Impact On Auditors
Sas 104 111 Impact On Auditors himetro
 
Audit Sampling by - Arjun Maurya.pptx
Audit Sampling by - Arjun Maurya.pptxAudit Sampling by - Arjun Maurya.pptx
Audit Sampling by - Arjun Maurya.pptxKakasServices
 
Audit Risk and Fraud
Audit Risk and FraudAudit Risk and Fraud
Audit Risk and FraudDwi Wahyu
 
Hanrick Curran Audit Training - Sampling for Audit Evidence - June 2013
Hanrick Curran Audit Training - Sampling for Audit Evidence - June 2013Hanrick Curran Audit Training - Sampling for Audit Evidence - June 2013
Hanrick Curran Audit Training - Sampling for Audit Evidence - June 2013Matthew Green
 
Psa 530-redrafted
Psa 530-redraftedPsa 530-redrafted
Psa 530-redraftedRS NAVARRO
 
Bsa 530 presesentation
Bsa 530 presesentationBsa 530 presesentation
Bsa 530 presesentationRakibul islam
 
A027 2010-iaasb-handbook-isa-530
A027 2010-iaasb-handbook-isa-530A027 2010-iaasb-handbook-isa-530
A027 2010-iaasb-handbook-isa-530RS NAVARRO
 

Similar a Audit Sampling (20)

Chapter 9 – homework
Chapter 9 – homeworkChapter 9 – homework
Chapter 9 – homework
 
T8 audit sampling
T8 audit samplingT8 audit sampling
T8 audit sampling
 
Auditing & Assurance Presentation
Auditing & Assurance PresentationAuditing & Assurance Presentation
Auditing & Assurance Presentation
 
Final-Audit-Sampling.pdf
Final-Audit-Sampling.pdfFinal-Audit-Sampling.pdf
Final-Audit-Sampling.pdf
 
Sampling concept
Sampling concept Sampling concept
Sampling concept
 
Data Analytics for Internal Auditors - Understanding Sampling
Data Analytics for Internal Auditors - Understanding SamplingData Analytics for Internal Auditors - Understanding Sampling
Data Analytics for Internal Auditors - Understanding Sampling
 
Judgment, haphazard and statistical sampling for interanl auditing
Judgment, haphazard and statistical sampling for interanl auditingJudgment, haphazard and statistical sampling for interanl auditing
Judgment, haphazard and statistical sampling for interanl auditing
 
Sas 104 111 Impact On Auditors
Sas 104 111 Impact On Auditors Sas 104 111 Impact On Auditors
Sas 104 111 Impact On Auditors
 
Audit Sampling by - Arjun Maurya.pptx
Audit Sampling by - Arjun Maurya.pptxAudit Sampling by - Arjun Maurya.pptx
Audit Sampling by - Arjun Maurya.pptx
 
Risk
RiskRisk
Risk
 
Audit Risk and Fraud
Audit Risk and FraudAudit Risk and Fraud
Audit Risk and Fraud
 
Ch 11. Evidence and Sampling
Ch 11. Evidence and SamplingCh 11. Evidence and Sampling
Ch 11. Evidence and Sampling
 
Hanrick Curran Audit Training - Sampling for Audit Evidence - June 2013
Hanrick Curran Audit Training - Sampling for Audit Evidence - June 2013Hanrick Curran Audit Training - Sampling for Audit Evidence - June 2013
Hanrick Curran Audit Training - Sampling for Audit Evidence - June 2013
 
Psa 530-redrafted
Psa 530-redraftedPsa 530-redrafted
Psa 530-redrafted
 
Risk Based Audit Approach
Risk Based Audit ApproachRisk Based Audit Approach
Risk Based Audit Approach
 
Risk and quality management
Risk and quality managementRisk and quality management
Risk and quality management
 
BBA504.pptx
BBA504.pptxBBA504.pptx
BBA504.pptx
 
Monitoring
MonitoringMonitoring
Monitoring
 
Bsa 530 presesentation
Bsa 530 presesentationBsa 530 presesentation
Bsa 530 presesentation
 
A027 2010-iaasb-handbook-isa-530
A027 2010-iaasb-handbook-isa-530A027 2010-iaasb-handbook-isa-530
A027 2010-iaasb-handbook-isa-530
 

Más de EMAC Consulting Group

Project risk management notes bagamoyo 12.10.2017 final v1
Project risk management  notes bagamoyo 12.10.2017 final v1Project risk management  notes bagamoyo 12.10.2017 final v1
Project risk management notes bagamoyo 12.10.2017 final v1EMAC Consulting Group
 
Contracts risk management notes bagamoyo 2.12.2017 final v1
Contracts risk management  notes bagamoyo 2.12.2017 final v1Contracts risk management  notes bagamoyo 2.12.2017 final v1
Contracts risk management notes bagamoyo 2.12.2017 final v1EMAC Consulting Group
 
Fraud risk management and interrogation techniques part ii
Fraud risk management and interrogation techniques part iiFraud risk management and interrogation techniques part ii
Fraud risk management and interrogation techniques part iiEMAC Consulting Group
 
Comprehensive audit committee training emac
Comprehensive audit committee training emacComprehensive audit committee training emac
Comprehensive audit committee training emacEMAC Consulting Group
 
Fraud risk management training - Elsam Management Consultants
Fraud risk management training - Elsam Management ConsultantsFraud risk management training - Elsam Management Consultants
Fraud risk management training - Elsam Management ConsultantsEMAC Consulting Group
 
Advanced Risk Management - Elsam Management Consultants
Advanced Risk Management - Elsam Management ConsultantsAdvanced Risk Management - Elsam Management Consultants
Advanced Risk Management - Elsam Management ConsultantsEMAC Consulting Group
 
Ipsas training part ii differences btn ipsas and ifrs
Ipsas training part ii differences btn ipsas and ifrsIpsas training part ii differences btn ipsas and ifrs
Ipsas training part ii differences btn ipsas and ifrsEMAC Consulting Group
 
Assurance engagement and prospective financial information 2
Assurance engagement and prospective financial information 2Assurance engagement and prospective financial information 2
Assurance engagement and prospective financial information 2EMAC Consulting Group
 
Financial markets and financial instruments
Financial markets and financial instrumentsFinancial markets and financial instruments
Financial markets and financial instrumentsEMAC Consulting Group
 
Analyitical review procedures and going concern
Analyitical review procedures and going concernAnalyitical review procedures and going concern
Analyitical review procedures and going concernEMAC Consulting Group
 

Más de EMAC Consulting Group (20)

Project risk management notes bagamoyo 12.10.2017 final v1
Project risk management  notes bagamoyo 12.10.2017 final v1Project risk management  notes bagamoyo 12.10.2017 final v1
Project risk management notes bagamoyo 12.10.2017 final v1
 
Contracts risk management notes bagamoyo 2.12.2017 final v1
Contracts risk management  notes bagamoyo 2.12.2017 final v1Contracts risk management  notes bagamoyo 2.12.2017 final v1
Contracts risk management notes bagamoyo 2.12.2017 final v1
 
Talent Management
Talent ManagementTalent Management
Talent Management
 
Fraud risk management and interrogation techniques part ii
Fraud risk management and interrogation techniques part iiFraud risk management and interrogation techniques part ii
Fraud risk management and interrogation techniques part ii
 
Comprehensive audit committee training emac
Comprehensive audit committee training emacComprehensive audit committee training emac
Comprehensive audit committee training emac
 
Ifrs for pensions schemes emac
Ifrs for pensions schemes emacIfrs for pensions schemes emac
Ifrs for pensions schemes emac
 
Fraud risk management training - Elsam Management Consultants
Fraud risk management training - Elsam Management ConsultantsFraud risk management training - Elsam Management Consultants
Fraud risk management training - Elsam Management Consultants
 
Advanced Risk Management - Elsam Management Consultants
Advanced Risk Management - Elsam Management ConsultantsAdvanced Risk Management - Elsam Management Consultants
Advanced Risk Management - Elsam Management Consultants
 
Ipsas training part iii final
Ipsas training part iii  finalIpsas training part iii  final
Ipsas training part iii final
 
Ipsas training part ii differences btn ipsas and ifrs
Ipsas training part ii differences btn ipsas and ifrsIpsas training part ii differences btn ipsas and ifrs
Ipsas training part ii differences btn ipsas and ifrs
 
Ipsas training part i overview
Ipsas training part i   overviewIpsas training part i   overview
Ipsas training part i overview
 
Fraud risk management
Fraud risk managementFraud risk management
Fraud risk management
 
Fraud risk management
Fraud risk management Fraud risk management
Fraud risk management
 
Assurance engagement and prospective financial information 2
Assurance engagement and prospective financial information 2Assurance engagement and prospective financial information 2
Assurance engagement and prospective financial information 2
 
Management audit sako
Management audit sakoManagement audit sako
Management audit sako
 
Financial markets and financial instruments
Financial markets and financial instrumentsFinancial markets and financial instruments
Financial markets and financial instruments
 
Analyitical review procedures and going concern
Analyitical review procedures and going concernAnalyitical review procedures and going concern
Analyitical review procedures and going concern
 
Audit of contracts version 2
Audit of contracts version 2Audit of contracts version 2
Audit of contracts version 2
 
Contract audit
Contract auditContract audit
Contract audit
 
Value for money audit
Value for money auditValue for money audit
Value for money audit
 

Último

Enhancing and Restoring Safety & Quality Cultures - Dave Litwiller - May 2024...
Enhancing and Restoring Safety & Quality Cultures - Dave Litwiller - May 2024...Enhancing and Restoring Safety & Quality Cultures - Dave Litwiller - May 2024...
Enhancing and Restoring Safety & Quality Cultures - Dave Litwiller - May 2024...Dave Litwiller
 
Ensure the security of your HCL environment by applying the Zero Trust princi...
Ensure the security of your HCL environment by applying the Zero Trust princi...Ensure the security of your HCL environment by applying the Zero Trust princi...
Ensure the security of your HCL environment by applying the Zero Trust princi...Roland Driesen
 
Call Girls Electronic City Just Call 👗 7737669865 👗 Top Class Call Girl Servi...
Call Girls Electronic City Just Call 👗 7737669865 👗 Top Class Call Girl Servi...Call Girls Electronic City Just Call 👗 7737669865 👗 Top Class Call Girl Servi...
Call Girls Electronic City Just Call 👗 7737669865 👗 Top Class Call Girl Servi...amitlee9823
 
Call Girls In Panjim North Goa 9971646499 Genuine Service
Call Girls In Panjim North Goa 9971646499 Genuine ServiceCall Girls In Panjim North Goa 9971646499 Genuine Service
Call Girls In Panjim North Goa 9971646499 Genuine Serviceritikaroy0888
 
Call Girls in Gomti Nagar - 7388211116 - With room Service
Call Girls in Gomti Nagar - 7388211116  - With room ServiceCall Girls in Gomti Nagar - 7388211116  - With room Service
Call Girls in Gomti Nagar - 7388211116 - With room Servicediscovermytutordmt
 
Organizational Transformation Lead with Culture
Organizational Transformation Lead with CultureOrganizational Transformation Lead with Culture
Organizational Transformation Lead with CultureSeta Wicaksana
 
Best VIP Call Girls Noida Sector 40 Call Me: 8448380779
Best VIP Call Girls Noida Sector 40 Call Me: 8448380779Best VIP Call Girls Noida Sector 40 Call Me: 8448380779
Best VIP Call Girls Noida Sector 40 Call Me: 8448380779Delhi Call girls
 
Dr. Admir Softic_ presentation_Green Club_ENG.pdf
Dr. Admir Softic_ presentation_Green Club_ENG.pdfDr. Admir Softic_ presentation_Green Club_ENG.pdf
Dr. Admir Softic_ presentation_Green Club_ENG.pdfAdmir Softic
 
It will be International Nurses' Day on 12 May
It will be International Nurses' Day on 12 MayIt will be International Nurses' Day on 12 May
It will be International Nurses' Day on 12 MayNZSG
 
Call Girls Pune Just Call 9907093804 Top Class Call Girl Service Available
Call Girls Pune Just Call 9907093804 Top Class Call Girl Service AvailableCall Girls Pune Just Call 9907093804 Top Class Call Girl Service Available
Call Girls Pune Just Call 9907093804 Top Class Call Girl Service AvailableDipal Arora
 
How to Get Started in Social Media for Art League City
How to Get Started in Social Media for Art League CityHow to Get Started in Social Media for Art League City
How to Get Started in Social Media for Art League CityEric T. Tung
 
Cracking the Cultural Competence Code.pptx
Cracking the Cultural Competence Code.pptxCracking the Cultural Competence Code.pptx
Cracking the Cultural Competence Code.pptxWorkforce Group
 
Famous Olympic Siblings from the 21st Century
Famous Olympic Siblings from the 21st CenturyFamous Olympic Siblings from the 21st Century
Famous Olympic Siblings from the 21st Centuryrwgiffor
 
VIP Call Girls In Saharaganj ( Lucknow ) 🔝 8923113531 🔝 Cash Payment (COD) 👒
VIP Call Girls In Saharaganj ( Lucknow  ) 🔝 8923113531 🔝  Cash Payment (COD) 👒VIP Call Girls In Saharaganj ( Lucknow  ) 🔝 8923113531 🔝  Cash Payment (COD) 👒
VIP Call Girls In Saharaganj ( Lucknow ) 🔝 8923113531 🔝 Cash Payment (COD) 👒anilsa9823
 
0183760ssssssssssssssssssssssssssss00101011 (27).pdf
0183760ssssssssssssssssssssssssssss00101011 (27).pdf0183760ssssssssssssssssssssssssssss00101011 (27).pdf
0183760ssssssssssssssssssssssssssss00101011 (27).pdfRenandantas16
 
M.C Lodges -- Guest House in Jhang.
M.C Lodges --  Guest House in Jhang.M.C Lodges --  Guest House in Jhang.
M.C Lodges -- Guest House in Jhang.Aaiza Hassan
 
Value Proposition canvas- Customer needs and pains
Value Proposition canvas- Customer needs and painsValue Proposition canvas- Customer needs and pains
Value Proposition canvas- Customer needs and painsP&CO
 
B.COM Unit – 4 ( CORPORATE SOCIAL RESPONSIBILITY ( CSR ).pptx
B.COM Unit – 4 ( CORPORATE SOCIAL RESPONSIBILITY ( CSR ).pptxB.COM Unit – 4 ( CORPORATE SOCIAL RESPONSIBILITY ( CSR ).pptx
B.COM Unit – 4 ( CORPORATE SOCIAL RESPONSIBILITY ( CSR ).pptxpriyanshujha201
 

Último (20)

Forklift Operations: Safety through Cartoons
Forklift Operations: Safety through CartoonsForklift Operations: Safety through Cartoons
Forklift Operations: Safety through Cartoons
 
Enhancing and Restoring Safety & Quality Cultures - Dave Litwiller - May 2024...
Enhancing and Restoring Safety & Quality Cultures - Dave Litwiller - May 2024...Enhancing and Restoring Safety & Quality Cultures - Dave Litwiller - May 2024...
Enhancing and Restoring Safety & Quality Cultures - Dave Litwiller - May 2024...
 
Ensure the security of your HCL environment by applying the Zero Trust princi...
Ensure the security of your HCL environment by applying the Zero Trust princi...Ensure the security of your HCL environment by applying the Zero Trust princi...
Ensure the security of your HCL environment by applying the Zero Trust princi...
 
Call Girls Electronic City Just Call 👗 7737669865 👗 Top Class Call Girl Servi...
Call Girls Electronic City Just Call 👗 7737669865 👗 Top Class Call Girl Servi...Call Girls Electronic City Just Call 👗 7737669865 👗 Top Class Call Girl Servi...
Call Girls Electronic City Just Call 👗 7737669865 👗 Top Class Call Girl Servi...
 
Call Girls In Panjim North Goa 9971646499 Genuine Service
Call Girls In Panjim North Goa 9971646499 Genuine ServiceCall Girls In Panjim North Goa 9971646499 Genuine Service
Call Girls In Panjim North Goa 9971646499 Genuine Service
 
Call Girls in Gomti Nagar - 7388211116 - With room Service
Call Girls in Gomti Nagar - 7388211116  - With room ServiceCall Girls in Gomti Nagar - 7388211116  - With room Service
Call Girls in Gomti Nagar - 7388211116 - With room Service
 
Organizational Transformation Lead with Culture
Organizational Transformation Lead with CultureOrganizational Transformation Lead with Culture
Organizational Transformation Lead with Culture
 
Best VIP Call Girls Noida Sector 40 Call Me: 8448380779
Best VIP Call Girls Noida Sector 40 Call Me: 8448380779Best VIP Call Girls Noida Sector 40 Call Me: 8448380779
Best VIP Call Girls Noida Sector 40 Call Me: 8448380779
 
Dr. Admir Softic_ presentation_Green Club_ENG.pdf
Dr. Admir Softic_ presentation_Green Club_ENG.pdfDr. Admir Softic_ presentation_Green Club_ENG.pdf
Dr. Admir Softic_ presentation_Green Club_ENG.pdf
 
It will be International Nurses' Day on 12 May
It will be International Nurses' Day on 12 MayIt will be International Nurses' Day on 12 May
It will be International Nurses' Day on 12 May
 
Call Girls Pune Just Call 9907093804 Top Class Call Girl Service Available
Call Girls Pune Just Call 9907093804 Top Class Call Girl Service AvailableCall Girls Pune Just Call 9907093804 Top Class Call Girl Service Available
Call Girls Pune Just Call 9907093804 Top Class Call Girl Service Available
 
How to Get Started in Social Media for Art League City
How to Get Started in Social Media for Art League CityHow to Get Started in Social Media for Art League City
How to Get Started in Social Media for Art League City
 
Cracking the Cultural Competence Code.pptx
Cracking the Cultural Competence Code.pptxCracking the Cultural Competence Code.pptx
Cracking the Cultural Competence Code.pptx
 
Famous Olympic Siblings from the 21st Century
Famous Olympic Siblings from the 21st CenturyFamous Olympic Siblings from the 21st Century
Famous Olympic Siblings from the 21st Century
 
VIP Call Girls In Saharaganj ( Lucknow ) 🔝 8923113531 🔝 Cash Payment (COD) 👒
VIP Call Girls In Saharaganj ( Lucknow  ) 🔝 8923113531 🔝  Cash Payment (COD) 👒VIP Call Girls In Saharaganj ( Lucknow  ) 🔝 8923113531 🔝  Cash Payment (COD) 👒
VIP Call Girls In Saharaganj ( Lucknow ) 🔝 8923113531 🔝 Cash Payment (COD) 👒
 
Mifty kit IN Salmiya (+918133066128) Abortion pills IN Salmiyah Cytotec pills
Mifty kit IN Salmiya (+918133066128) Abortion pills IN Salmiyah Cytotec pillsMifty kit IN Salmiya (+918133066128) Abortion pills IN Salmiyah Cytotec pills
Mifty kit IN Salmiya (+918133066128) Abortion pills IN Salmiyah Cytotec pills
 
0183760ssssssssssssssssssssssssssss00101011 (27).pdf
0183760ssssssssssssssssssssssssssss00101011 (27).pdf0183760ssssssssssssssssssssssssssss00101011 (27).pdf
0183760ssssssssssssssssssssssssssss00101011 (27).pdf
 
M.C Lodges -- Guest House in Jhang.
M.C Lodges --  Guest House in Jhang.M.C Lodges --  Guest House in Jhang.
M.C Lodges -- Guest House in Jhang.
 
Value Proposition canvas- Customer needs and pains
Value Proposition canvas- Customer needs and painsValue Proposition canvas- Customer needs and pains
Value Proposition canvas- Customer needs and pains
 
B.COM Unit – 4 ( CORPORATE SOCIAL RESPONSIBILITY ( CSR ).pptx
B.COM Unit – 4 ( CORPORATE SOCIAL RESPONSIBILITY ( CSR ).pptxB.COM Unit – 4 ( CORPORATE SOCIAL RESPONSIBILITY ( CSR ).pptx
B.COM Unit – 4 ( CORPORATE SOCIAL RESPONSIBILITY ( CSR ).pptx
 

Audit Sampling

  • 1. APT Financial Consultants AUDIT SAMPLING 1. Guiding standard ISA 530, Audit Sampling and Other Selective Testing procedures. 2. Audit sampling can be defined as an application of audit procedures to less than 100% of items within an account balance or class of transactions such that all sampling units have a chance of selection. This will enable the auditor to obtain and evaluate audit evidence about some characteristic of the items selected in order to form or assist in forming a conclusion concerning the population from which the sample is drawn. Audit sampling can use either a statistical or a non-statistical approach. 3. Formalized audit sampling procedures have been developed and become commonplace in the majority of audit firms. The use of audit sampling, on all audit assignments, offers innumerable benefits to all auditors. These include: • developing a consistent approach to audit areas; • providing a framework within which sufficient audit evidence is obtained; • forcing clarification of audit thinking in determining how the audit objectives will be met; • minimising the risk of over-auditing; and • facilitating more expeditious review of working papers. 3.0 Sampling risk is the risk that the sample is not representative of the population from which it is drawn and thus the auditor’s conclusion is different to that which would be reached if the whole population was examined. This may result in: (a) ‘The risk of incorrect rejection’ (also called Alpha risk) which arises when the sample indicates a higher level of errors than is actually the case. This situation is usually resolved by additional audit work being performed. This risk affects audit efficiency but should not affect the validity of the resulting audit conclusion; (b) ‘The risk of incorrect acceptance’ (also called Beta risk) when material error is not detected in a population because the sample failed to select sufficient items containing errors. This risk, which affects audit effectiveness, can be quantified using statistical sampling techniques. Although it is possible that an unqualified auditors’ report could be issued inappropriately, such errors should be detected by other complementary audit procedures (assuming that the sample size is appropriate to the level of detection risk). 4.0 ISA 530 defines non-sampling risk as the risk, which “arises from factors that cause the auditor to reach an erroneous conclusion for any reason not related to the size of the sample”. Thus non-sampling risk can also arise, for example, if the auditor fails to recognize an error in an individual item in a sample. The auditor seeks to minimize the risk of erroneous conclusions by proper planning, supervision and review. Examples of sources of non-sampling risk include: • Failure to investigate significant fluctuations in relationships when placing reliance on analytical procedures; and Sako Mayrick, 2008  Page 1 
  • 2. APT Financial Consultants • Placing reliance on management representations as a substitute for other audit evidence that could reasonably be expected to be available. 5.0 When planning the audit procedures to be adopted, the decision to sample account balances and transactions is influenced by: • materiality and the number of items in the population; • inherent risk (of errors arising); • relevance and reliability of evidence available through non-sampling procedures; and • costs and time involved. To obtain the overall level of assurance required, a cost-effective combination of sampling and non-sampling procedures should be determined. Audit sampling procedures are effected in four stages: 1.Sample design; 2.Sample selection; 3. testing (i.e., performing the audit procedure); and 4.evaluation. Sample design Sample design, which may be set out in a sample plan, includes consideration of: • Audit objective(s) of the test; • Population from which the sample is to be drawn; • Sampling unit; • Results or conditions that will be regarded as errors or deviations; • Sample size. In normal sampling techniques the following steps are followed. (a) Identification of the population (b) Definition of an error (c) Computation the appropriate sample size (d) Evaluation of the results of sample. Reasons for sampling: Cost benefit of 100% and sample. Size of the firm’s transactions Produce high level of assurance in respect of completeness. Definition of key terms: - Population – is the entire set of data from which the auditors wish to sample in order to reach a conclusion. Sako Mayrick, 2008  Page 2 
  • 3. APT Financial Consultants Audit Sampling – Is application of audit procedures (e.g.. Compliance or substantive tests) to less than 100% of the items within an account balance or class of transactions to enable auditors to obtain and evaluate evidence about some characteristics of the items. Selected in order to form or assist in forming a conclusion concerning the population, which makes up that account balance or class of transaction. Sampling units – Are individual items that make up the population. Error – Is an unintentional mistake in the financial statements. Precision – Is the measure of how much the conclusion drawn by the auditor from the results of testing a particular characteristic of a sample of items difference from known population characteristics at a given level of sampling risk. Tolerable error – is the maximum error in the population that auditors are willing to accept and still conclude that the audit objective have been achieved. Sampling risk – Is the risk that the auditors conclusion, based on a sample, may be different from the conclusion that would be reached of the entire population was subject to the same audit procedure: - Non- Sampling risk – Is the risk that the auditors might use inappropriate procedures or might mis interpret evidence and thus fail to recognize an error. Stratification—The process of dividing a population into subpopulations, each of which is a group of sampling units which have similar characteristics (often monetary value). Sampling Decision tree Judgmental - Proportion- Estimation (Non-statistical) Sampling for Discovery Attributes sampling Acceptance sampling Sampling Random Estimation sampling of (Statistical) - Value -Variables Monetary unit sampling. Characteristics of acceptable audit sample: Sufficient large population (e.g. more than 100). Anticipated error rate must be reasonably low. Population should be representative of all major transactions. Choice of sample population should be directly related to the test objective. The population tested should be reasonably homogeneous both in the type of balance and origin. E.g. Low-value and high value transactions. The population should be representative of the time period under review. E.g. not only for first 3 months. Every item in the population should stand an equal chance of selection. Sako Mayrick, 2008  Page 3 
  • 4. APT Financial Consultants Some testing procedures do not involve sampling example: Transaction and balances which, though few in number are of great significance in terms of size: e.g. land and building and extra ordinary/exceptional items. Non-homogeneous population where sorting will have to take place before sampling can be attempted. Small population where statistical, theory will create unacceptable margins of error. Testing 100% of items in a population. analytical procedures; Tests in total (also called proofs in total or logic tests) i.e., calculations of reasonableness based on independently verified data; ‘Walk-through’ tests, i.e., tracing a few transactions in order to obtain knowledge and understanding of the design and operation of accounting and internal control systems; and Other selective testing of specific items, e.g., high-value, key and unusual (but not representative) items. Sample Selection Methods The principal methods of selecting samples are as follows: (a) Use of a computerized random number generator (through CAATs) or random number tables. (b) Systematic selection, in which the number of sampling units in the population is divided by the sample size to give a sampling interval, for example 50, and having determined a starting point within the first 50, each 50th sampling unit thereafter is selected. Although the starting point may be determined haphazardly, the sample is more likely to be truly random if it is determined by use of a computerized random number generator or random number tables. When using systematic selection, the auditor would need to determine that sampling units within the population are not structured in such a way that the sampling interval corresponds with a particular pattern in the population. (c) Haphazard selection, in which the auditor selects the sample without following a structured technique. Although no structured technique is used, the auditor would nonetheless avoid any conscious bias or predictability (for example, avoiding difficult to locate items, or always choosing or avoiding the first or last entries on a page) and thus attempt to ensure that all items in the population have a chance of selection. Haphazard selection is not appropriate when using statistical sampling. (d) Block selection involves selecting a block(s) of contiguous items from within the population. Block selection cannot ordinarily be used in audit sampling because most populations are structured such that items in a sequence can be expected to have similar characteristics to each other, but different characteristics from items elsewhere in the population. Although in some circumstances it may be an appropriate audit procedure to examine a block of items, it would rarely be an appropriate sample selection technique when the auditor intends to draw valid inferences about the entire population based on the sample. Sako Mayrick, 2008  Page 4 
  • 5. APT Financial Consultants Approaches to sampling: (a) Statistical sampling – an approach to sampling which requires the use of random selection and uses probability theory to determine the sample size, to evaluate on quantitative basis the sample results and to measure the sampling risk. (b) Non statistical sampling (Judgement sampling): is any approach which does not fulfil all the conditions set out alongside for statistical sampling. The main stages in the sampling process are: (i) Determining objectives and population (ii) Determining sample size (iii) Choosing method of sample selection (iv) Analysing the results and projecting errors. Main approaches to audit sampling are (i) Attribute sampling (numerical) – is a aimed at detecting what proportion of a population either has or lacks, a specific characteristic or attribute. . (ii) Variable sampling – is aimed at ascertaining (monetary) The monetary value/extent of an error, be it over or understatement. The attribute sampling is more appropriate to compliance testing and variable sampling is better invited to substantive testing. Attribute (numerical) sampling: Each error or deviation from a prescribed control procedures in treated (or weighed) equally despite the fact the monetary values of the errors may be very different. The results of an attribute sample in compliance content is normally expressed in terms of “confidence level” or “precision” The determination of sample size requires judgement of: • assurance required; • tolerable and expected error (or deviation rate); and • stratification. Absolute assurance cannot be achieved through sampling procedures. The lower the assurance required, the smaller the required sample size. The tolerable error (or deviation rate) is also called precision. It is the maximum error (or deviation rate) that can be accepted to conclude that the audit objective has been achieved. (The combined tolerable error for all audit tests is sometimes called gauge.) For substantive tests, precision may be expressed as a monetary amount (which is less than overall materiality) or a percentage of population value. For tests of control, precision is the Sako Mayrick, 2008  Page 5 
  • 6. APT Financial Consultants maximum rate of failure of an internal control that can be accepted in order to place reliance on it (and is therefore likely to be small). Errors increase the imprecision of results from sampling. Therefore, if they are expected, a larger sample size is required. In attribute sampling: Sample size = Reliability factor (R-factor) Precision. Sampling risk is frequently expressed as a %. For example, 5% means that there is a 1 in 20 chance of material error going undetected (this is the risk accepted by many audit firms for any specific audit tests). Risk can also be expressed in terms of confidence levels (assurance required) and reliability factors. A confidence level is the degree of assurance that material error does not exist; it is the converse of risk. Reliability (R-) factors are derived from the Poisson sampling distribution (a distribution of ‘rare events’) and are related to risk percentages as shown in Figure 1. Note the ‘inverse’ nature of the relationship between R-factors and risk and that a confidence level is the mathematical complement of risk. The R – factor is taken from statistical tables such as this one: - Confidence Risk R- factors R-factor one Level/assurance level No. errors error required 99% 1% 4.6 6.61 95% 5% 3.0 4.75 90% 10% 2.3 3.89 85% 15% 1.9 3.38 80% 20% 1.6 3.0 70% 30% 1.2 2.44 The reliability factor is related to the amount of assurance the auditors wishes to draw from the test. Example: Sako Mayrick, 2008  Page 6 
  • 8. APT Financial Consultants Example 2 QUESTION 1: Calculate the sample size, which should be, used in test control in the following circumstances: - (a) No. Errors is anticipated in the sample; accept 5% risk that four or more items in 100 are incorrect in the population. (b) One error anticipated in the sample; accept 1-% risk that three or more items in every 100 are incorrect in the population solution. (See class notes for answers) An auditor is planning compliance tests and describes that he will accept the particular population as correct as long as he runs no more than 5% risk that 2 or more items, in every 100 are incorrect. The degree of precision required is +-2%. (i) If no errors are anticipated the sample size would be; (ii) If one error is anticipated the sample size rises to. Sako Mayrick, 2008  Page 8 
  • 9. APT Financial Consultants (iii) If in first example the auditor were prepared to accept higher error rate (say 4 items per 100) but no more) the sample size would fall:- ( See Class notes for this) In practice some accounting firm find it preferable to offer their audit staff a set of approach to statistical sampling for attributes; this minimizes both cost and the risk of variation between auditors and audit clients. The firms are confident that the samples size they recommended are representative of average sample sizes which would be obtained by using the above attribute sample size formula. The higher the sample size the higher the degree of reliance, Other forms of attribute sampling. Acceptance sampling: - The number of errors found in the sample will determine whether or not a population is accepted or rejected. E.g.: if error rate X% or less at a given confidence level the auditor may decide to accept the entire population. If the error rate in the sample rises above X% Then the population may be rejected as unreliable. Discovery sampling:- Called exploratory sampling is a secreening device for punching out populations which require further investigation”. The method involves lying to discover of errors are occurring at over an acceptable rate. Thus the auditor would sample until such an error was found. Precision (materiality is determined by the auditor prior to the Commencement of sampling. R- factors are arrived at as a result of compliance testing procedures. The value of population is given in draft financial statements which the client prepares. Variable Sampling and Monetary Unit Sampling ( MUS) Variable sampling have difficulty in dealing with understatements of account balances.Why? They can only test what is actually there – tests for understatements are generally carried out at the compliance or attribute sampling stage. Invoices which not exists cannot be tested at substantive stage and thus a balances which are materially understated will stand a lower chance of being selected for audit testing at the substantive testing stage. MUS gives a conclusion based on monetary amounts. Not rates of occurrence. It does this by defining each Shs.1 of the population as a sampling unit of Shs.1. and an individual balance of Tshs.300 is 300 sampling units of Shs.300. From attribute sampling scheme: Sample size = Reliability R- factor Precision The MUS sample size formula is slightly different: rather than stating precision as a rate of occurrence; it is restated in monetary. Sako Mayrick, 2008  Page 9 
  • 10. APT Financial Consultants Substantive procedures: variable sampling, Variable sampling is concerned with sampling units which can take a value within a continuous range of possible values and is used to provide conclusions as to the monetary value of a population. The auditors can use it to. (a) Estimate the value of a population by extrapolating statistically the value of a representative sample items drawn from population. (b) Determine the accuracy of a population that has already been ascribed a value (generally described as “hypothesis” testing) -The variable (Monetary) sampling is most suited for substantive testing situation. -The true variable sampling involves the estimation of both the number of units m a population and the standard deviation of a population a population. The above might be too involving to construction of pilot (or preliminary) samples. Monetary units sampling: It is a technique developed to avoid traditional variables sampling approach and its time – consuming methodology – there is a no need for the auditor to be aware of either the number of units in the population or the standard deviation of those units. The MUS focuses on materiality, the R-factor reliability and the total value stated in the financial statements. Terms as follows; Precision (as in altribute = Tolerable error Sampling formula above Population value Therefore: Sample size = Reliability factor x population value Tolerable error Sampling interval = Population value or Tolerable error Sample size Reliability factor Example: Using the information in question 1(a), show the selection of sample items, given that. (a) Tolerable error = 2,000,000 (b) Population value = Shs.50m. (c) Random start item 100,000 (d) The first ten ledger balances on the ledger m question are: Shs.250,000, 272,500; Sako Mayrick, 2008  Page 10 
  • 11. APT Financial Consultants Shs, 751,000; Shs.84, 500; Shs99,000; Shs, 172,000;Shs.982,100; 227,190,Shs.35,900:shs.486,200. ANSWER: Sample size = ( See class notes) Sampling internal = (See class notes) The sample will be selected as follows: Ladger Value Cumulative Selected Balance Value Amount Shs. Shs. Shs. Shs. 1. 250,000 250,000 100,000 2. 272,500 522,500 - 3. 751,000 1,273,800 760,666 4. 84,500 1,358,000 - 5. 99,000 1,457,000 1,433,320 6. 17,200 1,474,200 - 7. 982,100 2,456,300 2,099,980 8. 2,271,900 4,728,200 2,766,640 9. 35,900 4.764,100 - 10 486,200 5,250,300 4,766,620 Etc. Etc. Etc. Etc. The sample in the above results will not be as great as 75 balance of item 8 on ledger (and other balances of similar value will have the same effect0. This demonstrates one advantage of mus in that all items larger than the sampling internal will be selected. This selection of larger items gives a weighting, which makes a reduction in sample size acceptable. Example 2: An auditor, who is willing to tolerable errors tolling Shs.1, 000,000 in a population value of Shs.20m. is working to precision of 5%. Substituting this into attribute sampling formula we get. Sample size = Reliability factor x population value Tolerable error To extend the above sample, suppose the auditor has divided, on the basis of a full review of inherent risk control risk and analytical review risk that the reliability factor should be 3.0. The sample size will thus be. Sample size = 3.0 X 20,000,000 = 60 items 1,000,000 Once the sample size has been calculated the auditor proceeds to actual Choice of sample items. Sako Mayrick, 2008  Page 11 
  • 12. APT Financial Consultants The first step in this process is to compute the sampling interval. Sampling Interval = Population value = Shs.335, 330 Sample size Or = Tolerable error = 10,000,000 Reliability factor 3.0 = 333,330 As noted above, each Shs.1 of population is regarded as a separate sampling unit. Thus auditor having selected a random starting point in (say) a list of ledger balances needs to select every 333,330rd sampling unit encountered, as the population is cumulatively added from zero at the random staring point. Obviously every 333,330rd sampling unit is a part of particular debtor balance. That particular balance is then selected for testing. This “systematic selection of sample items is demonstrated below. Sampling Internal 333,330/=. Ledger balance Value Cumulative Value Random Start /Item Shs. Shs. Shs.160, 000 Selected Shs. 1. 100,000 100,000 - 2. 185,000 285,000 160,000 3. 200,000 485,000 - 4. 60,000 545,000 493,330 5. 65,000 610,000 - 6. 460,000 1,070,000 826,660 7. 96,000 1,166,000 1,159,990 8. 164,000 1,330,000 - 9. 1,267,500 2,597,500 1,493,320 10. 27,259 288,000 18,266,650 - - - 2,159,980 - - - 2,493,310 - - - 2,826,640 Etc. Etc. Etc. Etc. In the example of systematic selection given immediately above the auditor will fail to achieve the desired sample size of….items because of item 9 and any other items of a similar magnitude which may occur later in cumulative addition process. “Not only MUS gives higher – value items a greater chance of selection but it will also be noted that all items whose value in is excess of the sampling internal are guaranteed to be selected. In fact, such items. Could be selected more than once of two if course they need only be tested once (on the assumption that high-value items have not been preselected and separately Sako Mayrick, 2008  Page 12 
  • 13. APT Financial Consultants evaluated). If balances larger than the sampling internal are present, the size of the sample actually selected will be less than computed. This shortfall is acceptable but should be reconciled to prove the accuracy of the sample by reference to the number of items each 10% stratum item was selected. Thus for example above, assuming that no further items exist which are equal to or more than twice the sampling internal, the final number of items selected will be 57 (instead of 60) and the reconciling balance will be three times that tem 9 was registered after initial selection. Evaluation of MUS results Where no errors are formed in the sample, then the “Prevision” achieved will be that predicted in terms of “tolerable errors” by the auditors before the test was carried the conclusion that can be drawn that the population from which the sample was drawn that the population from which the sample was drawn was not overstated by more than the monetary precision specified here (usually materiality). -This conclusion cannot be drawn when errors are found. -When an error is in item larger than the sampling interval, the auditors will be assured that the absolute amount of error in this top “strata of balances is known, because all such items have been examined in the test. -When the error is found in an item is smaller than the sampling internal, then it will be necessary to project the level of error on the rest of the population. The projection has two aspects (a) Estimating the probable error in the population (b) Adjusting the value of each error by a prevision by a prevision gap widening factor to arrive at the upper error limit. (The purpose of this is to estimate the error that may not have been found because of the imprecision of the estimation technique). STEPS: (1) Calculate the most likely error – sort the errors into over and under statements. E.g. in above example: suppose that there are three errors of over-statements. Errors Item %error Sampling Expected Shs. Value Internal Value of error In sampling Internal Higher value items 13000 754000 - 666660 13000 Lower value items 123600 294800 8% 666660 533330 15000 3000,000 5% 666660 33330 Most likely error 99,660 Where an error is found in lower-value item (value of item & sampling internal), the error is projected (or tamped) over the sampling internal (by Multiplying sampling internal by % error). Sako Mayrick, 2008  Page 13 
  • 14. APT Financial Consultants Where the error is higher value item (value item) sampling internal) the error is the exact amount of error in the sample (ii) Calculate the upper error limit: This involves “Precision gap widening.” The errors are ranked in % terms and a precision gap factor applied to them, based on the risk accepted. Error No: Prevision gap To error Sampling Internal Precision Widening factor (tempting gap widening 1 0.15 8% 666660 40000 2 0.55 6% 6666660 22000 The user error limit is calculated as follows: Shs: Sampling internal X reliability factor (666660 x 3) 2,000,000 Most likely error 99660 Prevision gap-widening 62000 Upper error limit 2,161,660 The implication of this result is that there is 5% risk that the error in the population will exceed Shs. 2161,660. If the upper limit is greater than the tolerable errir; the following guideline is available. (a) As the client to adjust for any specific errors identified. (b) Reconsider such aspects of process as risk levels, tolerable error and sample size greater care should be taken before original audit judgements are revised. (c) Consider the need for further adjustments of account balances concerned, e.g. additional bad debt’s provision. (d) Consider the eventual form of the audit report – is qualification or disclaimer required. Sako Mayrick, 2008  Page 14