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Research Methodology




        Chapter 6:
Sample Designs and Sampling
        Procedures
Sampling Terminology
•   Sample
•   Population or universe
•   Population element
•   Census
Sample
• Subset of a larger population
Population
• A population is the total collection of elements
  about which we wish to make some inferences.


• Any complete group
– People
– Sales territories
– Stores
Census
• Investigation of all individual elements that
  make up a population

A census is a count of
all the elements in a
 population.
Sampling
• The process of using a small number of
  items or parts of larger population to make
  a conclusions about the whole population
Selecting samples
       Population, sample and individual cases




                                            Source: Saunders et al. (2009)

Figure 7.1 Population, sample and individual cases
The need to sample

Sampling- a valid alternative to a census when

• A survey of the entire population is impracticable

• Budget constraints restrict data collection

• Time constraints restrict data collection

• Results from data collection are needed quickly
Overview of sampling techniques
                     Sampling techniques




                                  Source: Saunders et al. (2009)
Figure 7.2 Sampling techniques
Stages in the          Define the target population
Selection
of a Sample              Select a sampling frame


                Determine if a probability or nonprobability
                     sampling method will be chosen

                              Plan procedure
                        for selecting sampling units


                          Determine sample size



                       Select actual sampling units



                             Conduct fieldwork
Target Population
• The specific , complete group to research
  project
Sampling Frame
• A sample frame is the listing of all population
  elements from which the sample will be drawn.
Sampling Units
•   Group selected for the sample
•   Primary Sampling Units (PSU)
•   Secondary Sampling Units
•   Tertiary Sampling Units
Random Sampling Error
• The difference between the sample results
  and the result of a census conducted using
  identical procedures
• Statistical fluctuation due to chance
  variations
Systematic Errors
•   Nonsampling errors
•   Unrepresentative sample results
•   Not due to chance
•   Due to study design or imperfections in
    execution
Errors Associated with Sampling
• Sampling frame error
• Random sampling error
• Nonresponse error
Two Major Categories of
          Sampling
• Probability sampling
     • Known, nonzero probability for every
       element
• Nonprobability sampling
     • Probability of selecting any particular
       member is unknown
Nonprobability Sampling
•   Convenience
•   Judgment
•   Quota
•   Snowball
Probability Sampling
•   Simple random sample
•   Systematic sample
•   Stratified sample
•   Cluster sample
•   Multistage area sample
Convenience Sampling

• Convenience samples are nonprobability
  samples where the element selection is
  based on ease of accessibility. They are the
  least reliable but cheapest and easiest to
  conduct.
• Examples include informal pools of friends
  and neighbors, people responding to an
  advertised invitation, and “on the street”
  interviews.
Judgment Sampling
• Also called purposive sampling
• An experienced individual selects the
  sample based on his or her judgment about
  some appropriate characteristics required
  of the sample member
Quota Sampling
• Ensures that the various subgroups in a
  population are represented on pertinent
  sample characteristics
• To the exact extent that the investigators
  desire
• It should not be confused with stratified
  sampling.
Snowball Sampling
• A variety of procedures
• Initial respondents are selected by
  probability methods
• Additional respondents are obtained from
  information provided by the initial
  respondents
Simple Random Sampling
• A sampling procedure that ensures that each
  element in the population will have an equal
  chance of being included in the sample
Simple Random

Advantages                Disadvantages
•Easy to implement with   •Requires list of
random dialing            population elements
                          •Time consuming
                          •Larger sample needed
                          •Produces larger errors
                          •High cost

 14-25
Systematic Sampling
• A simple process
• Every nth name from the list will be drawn
Systematic

Advantages                 Disadvantages
•Simple to design          •Periodicity within
•Easier than simple        population may skew
random                     sample and results
•Easy to determine         •Trends in list may bias
sampling distribution of   results
mean or proportion         •Moderate cost


 14-27
Stratified Sampling
• Probability sample
• Subsamples are drawn within different
  strata
• Each stratum is more or less equal on some
  characteristic
• Do not confuse with quota sample
Stratified

Advantages                          Disadvantages
•Control of sample size in          •Increased error if subgroups
strata                              are selected at different rates
•Increased statistical efficiency   •Especially expensive if strata
•Provides data to represent and     on population must be created
analyze subgroups                   •High cost
•Enables use of different
methods in strata


 14-29
Cluster Sampling
• The purpose of cluster sampling is to
  sample economically while retaining the
  characteristics of a probability sample.
• The primary sampling unit is no longer the
  individual element in the population
• The primary sampling unit is a larger
  cluster of elements located in proximity to
  one another
Cluster

Advantages                       Disadvantages
•Provides an unbiased estimate   •Often lower statistical
of population parameters if      efficiency due to subgroups
properly done                    being homogeneous rather than
•Economically more efficient     heterogeneous
than simple random               •Moderate cost
•Lowest cost per sample
•Easy to do without list



 14-31
Examples of Clusters
Population Element      Possible Clusters in the United States


U.S. adult population   States
                        Counties
                        Metropolitan Statistical Area
                        Census tracts
                        Blocks
                        Households
Examples of Clusters

Population Element    Possible Clusters in the United States


College seniors       Colleges
Manufacturing firms   Counties
                      Metropolitan Statistical Areas
                      Localities
                      Plants
Examples of Clusters
Population Element     Possible Clusters in the United States


Airline travelers      Airports
                       Planes

Sports fans            Football stadiums
                       Basketball arenas
                       Baseball parks
What is the
     Appropriate Sample Design?
•   Degree of accuracy
•   Resources
•   Time
•   Advanced knowledge of the population
•   National versus local
•   Need for statistical analysis
Internet Sampling is Unique
• Internet surveys allow researchers to rapidly
  reach a large sample.
• Speed is both an advantage and a
  disadvantage.
• Sample size requirements can be met
  overnight or almost instantaneously.
• Survey should be kept open long enough so
  all sample units can participate.
Internet Sampling
• Major disadvantage
  – lack of computer ownership and Internet
    access among certain segments of the
    population
• Yet Internet samples may be representative
  of a target populations.
  – target population - visitors to a particular Web
    site.
• Hard to reach subjects may participate
Web Site Visitors
• Unrestricted samples are clearly
  convenience samples
• Randomly selecting visitors
• Questionnaire request randomly "pops up"
• Over- representing the more frequent
  visitors
Panel Samples
• Typically yield a high response rate
  – Members may be compensated for their time
    with a sweepstake or a small, cash incentive.
• Database on members
  – Demographic and other information from
    previous questionnaires
• Select quota samples based on product
  ownership, lifestyle, or other characteristics.
• Probability Samples from Large Panels
Internet Samples
• Recruited Ad Hoc Samples
• Opt-in Lists

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Sampling

  • 1. Research Methodology Chapter 6: Sample Designs and Sampling Procedures
  • 2. Sampling Terminology • Sample • Population or universe • Population element • Census
  • 3. Sample • Subset of a larger population
  • 4. Population • A population is the total collection of elements about which we wish to make some inferences. • Any complete group – People – Sales territories – Stores
  • 5. Census • Investigation of all individual elements that make up a population A census is a count of all the elements in a population.
  • 6. Sampling • The process of using a small number of items or parts of larger population to make a conclusions about the whole population
  • 7. Selecting samples Population, sample and individual cases Source: Saunders et al. (2009) Figure 7.1 Population, sample and individual cases
  • 8. The need to sample Sampling- a valid alternative to a census when • A survey of the entire population is impracticable • Budget constraints restrict data collection • Time constraints restrict data collection • Results from data collection are needed quickly
  • 9. Overview of sampling techniques Sampling techniques Source: Saunders et al. (2009) Figure 7.2 Sampling techniques
  • 10. Stages in the Define the target population Selection of a Sample Select a sampling frame Determine if a probability or nonprobability sampling method will be chosen Plan procedure for selecting sampling units Determine sample size Select actual sampling units Conduct fieldwork
  • 11. Target Population • The specific , complete group to research project
  • 12. Sampling Frame • A sample frame is the listing of all population elements from which the sample will be drawn.
  • 13. Sampling Units • Group selected for the sample • Primary Sampling Units (PSU) • Secondary Sampling Units • Tertiary Sampling Units
  • 14. Random Sampling Error • The difference between the sample results and the result of a census conducted using identical procedures • Statistical fluctuation due to chance variations
  • 15. Systematic Errors • Nonsampling errors • Unrepresentative sample results • Not due to chance • Due to study design or imperfections in execution
  • 16. Errors Associated with Sampling • Sampling frame error • Random sampling error • Nonresponse error
  • 17. Two Major Categories of Sampling • Probability sampling • Known, nonzero probability for every element • Nonprobability sampling • Probability of selecting any particular member is unknown
  • 18. Nonprobability Sampling • Convenience • Judgment • Quota • Snowball
  • 19. Probability Sampling • Simple random sample • Systematic sample • Stratified sample • Cluster sample • Multistage area sample
  • 20. Convenience Sampling • Convenience samples are nonprobability samples where the element selection is based on ease of accessibility. They are the least reliable but cheapest and easiest to conduct. • Examples include informal pools of friends and neighbors, people responding to an advertised invitation, and “on the street” interviews.
  • 21. Judgment Sampling • Also called purposive sampling • An experienced individual selects the sample based on his or her judgment about some appropriate characteristics required of the sample member
  • 22. Quota Sampling • Ensures that the various subgroups in a population are represented on pertinent sample characteristics • To the exact extent that the investigators desire • It should not be confused with stratified sampling.
  • 23. Snowball Sampling • A variety of procedures • Initial respondents are selected by probability methods • Additional respondents are obtained from information provided by the initial respondents
  • 24. Simple Random Sampling • A sampling procedure that ensures that each element in the population will have an equal chance of being included in the sample
  • 25. Simple Random Advantages Disadvantages •Easy to implement with •Requires list of random dialing population elements •Time consuming •Larger sample needed •Produces larger errors •High cost 14-25
  • 26. Systematic Sampling • A simple process • Every nth name from the list will be drawn
  • 27. Systematic Advantages Disadvantages •Simple to design •Periodicity within •Easier than simple population may skew random sample and results •Easy to determine •Trends in list may bias sampling distribution of results mean or proportion •Moderate cost 14-27
  • 28. Stratified Sampling • Probability sample • Subsamples are drawn within different strata • Each stratum is more or less equal on some characteristic • Do not confuse with quota sample
  • 29. Stratified Advantages Disadvantages •Control of sample size in •Increased error if subgroups strata are selected at different rates •Increased statistical efficiency •Especially expensive if strata •Provides data to represent and on population must be created analyze subgroups •High cost •Enables use of different methods in strata 14-29
  • 30. Cluster Sampling • The purpose of cluster sampling is to sample economically while retaining the characteristics of a probability sample. • The primary sampling unit is no longer the individual element in the population • The primary sampling unit is a larger cluster of elements located in proximity to one another
  • 31. Cluster Advantages Disadvantages •Provides an unbiased estimate •Often lower statistical of population parameters if efficiency due to subgroups properly done being homogeneous rather than •Economically more efficient heterogeneous than simple random •Moderate cost •Lowest cost per sample •Easy to do without list 14-31
  • 32. Examples of Clusters Population Element Possible Clusters in the United States U.S. adult population States Counties Metropolitan Statistical Area Census tracts Blocks Households
  • 33. Examples of Clusters Population Element Possible Clusters in the United States College seniors Colleges Manufacturing firms Counties Metropolitan Statistical Areas Localities Plants
  • 34. Examples of Clusters Population Element Possible Clusters in the United States Airline travelers Airports Planes Sports fans Football stadiums Basketball arenas Baseball parks
  • 35. What is the Appropriate Sample Design? • Degree of accuracy • Resources • Time • Advanced knowledge of the population • National versus local • Need for statistical analysis
  • 36. Internet Sampling is Unique • Internet surveys allow researchers to rapidly reach a large sample. • Speed is both an advantage and a disadvantage. • Sample size requirements can be met overnight or almost instantaneously. • Survey should be kept open long enough so all sample units can participate.
  • 37. Internet Sampling • Major disadvantage – lack of computer ownership and Internet access among certain segments of the population • Yet Internet samples may be representative of a target populations. – target population - visitors to a particular Web site. • Hard to reach subjects may participate
  • 38. Web Site Visitors • Unrestricted samples are clearly convenience samples • Randomly selecting visitors • Questionnaire request randomly "pops up" • Over- representing the more frequent visitors
  • 39. Panel Samples • Typically yield a high response rate – Members may be compensated for their time with a sweepstake or a small, cash incentive. • Database on members – Demographic and other information from previous questionnaires • Select quota samples based on product ownership, lifestyle, or other characteristics. • Probability Samples from Large Panels
  • 40. Internet Samples • Recruited Ad Hoc Samples • Opt-in Lists

Editor's Notes

  1. In drawing a sample with simple random sampling, each population element has an equal chance of being selected into the samples. The sample is drawn using a random number table or generator. This slide shows the advantages and disadvantages of using this method. The probability of selection is equal to the sample size divided by the population size. Exhibit 14-6 covers how to choose a random sample. The steps are as follows: Assign each element within the sampling frame a unique number. Identify a random start from the random number table. Determine how the digits in the random number table will be assigned to the sampling frame. Select the sample elements from the sampling frame.
  2. In drawing a sample with systematic sampling, an element of the population is selected at the beginning with a random start and then every K th element is selected until the appropriate size is selected. The kth element is the skip interval, the interval between sample elements drawn from a sample frame in systematic sampling. It is determined by dividing the population size by the sample size. To draw a systematic sample, the steps are as follows: Identify, list, and number the elements in the population Identify the skip interval Identify the random start Draw a sample by choosing every kth entry. To protect against subtle biases, the research can Randomize the population before sampling, Change the random start several times in the process, and Replicate a selection of different samples.
  3. In drawing a sample with stratified sampling, the population is divided into subpopulations or strata and uses simple random on each strata. Results may be weighted or combined. The cost is high. Stratified sampling may be proportion or disproportionate. In proportionate stratified sampling, each stratum’s size is proportionate to the stratum’s share of the population. Any stratification that departs from the proportionate relationship is disproportionate.
  4. In drawing a sample with cluster sampling, the population is divided into internally heterogeneous subgroups. Some are randomly selected for further study. Two conditions foster the use of cluster sampling: the need for more economic efficiency than can be provided by simple random sampling, and 2) the frequent unavailability of a practical sampling frame for individual elements. Exhibit 14-7 provides a comparison of stratified and cluster sampling and is highlighted on the next slide. Several questions must be answered when designing cluster samples. How homogeneous are the resulting clusters? Shall we seek equal-sized or unequal-sized clusters? How large a cluster shall we take? Shall we use a single-stage or multistage cluster? How large a sample is needed?