DATA COLLECTION IN RESEARCH

SHAYA'A OTHMAN MANAGEMENT & RESEARCH METHODOLOGY
SHAYA'A OTHMAN MANAGEMENT & RESEARCH METHODOLOGYSenior Academic Fellow [IIIT], and Chief Executive Officer [UCSC]
1. Overview of Statistics & Collection of Data
 
Shaya’a Othman Definition of Statistics “ Statistics  is a scientific method of  collecting ,  organizing ,  presenting ,  analyzing  and  interpreting  of numerical information, developed from mathematical theory of probability, to assist in making  effective  and  efficient  decision.” Definition by Shaya'a Othman,
OVERVIEW OF STATISTICS Collecting & Publishing  Numerical data ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],DEFINATION DESCRIPTIVE  STATISTICS:   Methods of  Organizing , and  Presenting  Data in informative way . INFERENTIAL  STATISTICS : Methods of  determine  something about  population  base on  sample . ,[object Object],[object Object],[object Object],[object Object],[object Object],DATA TYPES Varibles Levels Inferential Descriptive Science common ETHICS ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],COMPUTER STATISTICS
Collection of Data Primary Data Secondary Data Census [Total Count] Sample [selected Count] ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],Private Survey/Research Co. ,[object Object],[object Object],[object Object],[object Object],[object Object],Government Publications International Organization Private Publication/Data Total Count of Population Selected Count of Population Internet, Website ,- CIA Data SOURSE TECHNIQUES METHODS Internets COLLECTING DATA
RESEARCH METHODOLOGY
WHAT IS HYPOTHESIS ?
5-STEPS PROCEDURE FOR TESTING HYPOTHESIS STEPS ACTIONS DESCRIPTIONS STEP 1 State Null and Alternative hypothesis Null Hypothesis  : Ho  = 0 Alternative Hypothesis  : H1  =  0 Note :  1.Two-tailed test if alternative hypothesis does not state direction [ greater or less]. 2. One-tailed test if alternative state direction.  STEP 2 Select Level of Significance ,[object Object],[object Object],[object Object],STEP 3 Identify the test Statistics z  and  t  as test statistic , and others Non-Parametric Test : F  and X Chi-square statistic STEP  4 Formulate Decision Rule Find the  critical value of z from Normal Distribution table , or value t from t distribution table where appropriate. STEP 5 Take a sample arrive at decision Only ONE DECISION is possible in Hypothesis Testing Do  not reject Null Hypothesis , or  reject Null Hypothesis and Accept Alternative Hypothesis
1.Two-tailed test if alternative hypothesis does not state direction  [ greater or less]. 2. One-tailed test if alternative state direction.
 
Possibility Two Type of Errors [Type I and Type II]
 
- - - - - - - STATISTICAL TEST OF HYPOTHESIS One-Sample  Tests of Hypothesis Two-Samples  Tests of Hypothesis Large sample [ n more than 30] Small Sample [ n less than 30] Large Sample  [n more than 30 ] Small Sample [n less than 30] Two-Tail Test [No direction] z  =  x – u σ /√n Using normal distribution table t  =  x -  u s/ √n df = n-1 Using t distribution table z =  x₁ - x₂ ______  √ [ ( σ₁ ²  / n₁ ) +( σ₂² / n₂)] t =  x₁ - x₂ ______  √ [ (s ₁²  /n₁ ) +(s ₂² / n₂ )] df = n  + n  -  2 Using t- distribution table One-Tail Test [With direction : Greater or less than]
Hypothesis  – “A supposition or proposed explanation made on the basis of limited evidence as a starting point for further investigation .  Oxford Dictionary  Hypothesis  – “ A statement or conjecture which is neither true nor false, subjected to be verified “  Shayaa Othman, KUIS Hypothesis  – “A statement about a population parameter developed for the purpose of testing “  Douglas A Lind Statistical Techniques on Business Economics Hypothesis Testing  – “A  procedure based on sample evidence and probability theory to determine whether the hypothesis is a reasonable statement. “ Douglas A Lind statistical Techniques on Business Economics Null Hypothesis  – “A statement about a the value of a population parameter.” Douglas A Lind statistical Techniques on Business Economics Alternative Hypothesis  – “A statement that is accepted if the sample data provide sufficient evidence that the null hypothesis is false.”  Douglas A Lind statistical Techniques on Business Economics
Describing Data – Measures of Location Population Mean  =  Sum of all the values in the Population    Number of Values in the Population Sample Mean  =  Sum of values in the Sample   =  Σ x   Number of Values in the Sample  n Weighted Mean = Σ[wx]   Σw Parameter = A characteristic of Population Median   =  The midpoint of values after they have been ordered from the  smallest  to the highest Mode = The value of observations that appears most frequently
Describing data = Measures of Dispersion Range = Largest Value – Smaller Value Mean Deviation = The Arithmetic mean of the absolute values of the deviation from   the arithmetic mean   =   l X- X l    n where  is sigma [sum of]; X = value of each observation;    X = arithmetic mean of the values; n is number of    observation ; l  l indicates absolute values  Variance  = The arithmetic mean of the of the squared deviation from the mean Standard Deviation  =  The Square Root of the variance Location of Percentiles  =  L p = (n+1)  P     100 M M
Characteristics of the Mean It is calculated by summing the values and dividing by the number of values. ,[object Object],[object Object],[object Object],[object Object],The  Arithmetic Mean  is the most widely used measure of location and shows the central value of the data. The major characteristics of the mean are: 3-
Population Mean ,[object Object],[object Object],[object Object],[object Object],[object Object],For ungrouped data, the  Population Mean  is the sum of all the population values divided by the total number of population values: 3-
Example 1 Find the mean mileage for the cars. A  Parameter   is a measurable characteristic of a population. AHMAD’s family owns four cars.  The following is the current mileage on each of the four cars.  56,000 23,000 42,000 73,000 3-
Sample Mean where  n  is the total number of values in the sample. For ungrouped data, the sample mean is the sum of all the sample values divided by the number of sample values: 3-
Example 2 A  statistic   is a measurable characteristic of a sample. A sample of five executives received the following bonus last year ($000): 14.0, 15.0, 17.0, 16.0, 15.0 3-
Example 4 During a one hour period on a hot Saturday afternoon in Langkawi, Ahmad sold fifty drinks.  He sold five drinks for $0.50,; fifteen for $0.75, fifteen for $0.90, and fifteen for $1.10.  Compute the  weighted mean  of the price of the drinks. 3-
The Median There are as many values above the median as below it in the data array. For an even set of values, the median will be the arithmetic average of the two middle numbers and is found at the (n+1)/2 ranked observation. The  Median   is the   midpoint of the values after they have been ordered from the smallest to the largest.  3-
The median (continued) The ages for a sample of five INSANIAH students visiting Islamic Artifact Exhibition: 21, 25, 19, 20, 22,18, 27. Arranging the data in ascending order gives:  18,19, 20, 21, 22, 25, 27  Thus  median   =  21. 3-
Example 5 Arranging the data in ascending order gives:  73, 76, 80   Thus the  median  is 76. The heights of 3 INSANIAH Lecturers, in inches, are:  76, 73, 80. The median is found at the (n+1)/2 = (3+1)/2 =2 th  data point.  3-
The Mode: Example 6 Example 6 :  The exam scores for ten students are: 81, 93, 84, 75, 68, 87, 81, 75, 81, 87.  Because the score of  81 occurs the most often , it is the  mode.   Data can have more than one mode.  If it has two modes, it is referred to as bimodal, three modes, trimodal, and the like. The   Mode  is another measure of location and represents the value of the observation that appears most frequently. 3-
The Relative Positions of the Mean, Median, and Mode Symmetric distribution :  A distribution having the same shape on either side of the center  Skewed distribution :  One whose shapes on either side of the center differ; a nonsymmetrical distribution.  Can be positively or negatively skewed, or bimodal 3-
The Relative Positions of the Mean, Median, and Mode:  Symmetric Distribution ,[object Object],[object Object],[object Object],3-
The Relative Positions of the Mean, Median, and Mode:  Right Skewed Distribution ,[object Object],Mean>Median>Mode 3-
[object Object],[object Object],The Relative Positions of the Mean, Median, and Mode:  Left Skewed Distribution 3-
Geometric Mean The geometric mean is used to average percents, indexes, and relatives. The  Geometric Mean  ( GM ) of a set of n numbers is defined as the  nth  root of the product of the  n  numbers. The formula is: 3-
Example 7 The interest rate on three bonds were 5, 21, and 4 percent. The arithmetic mean is (5+21+4)/3 =10.0. The geometric mean is The  GM  gives a more conservative profit figure because it is not heavily weighted by the rate of 21percent. 3-
Geometric Mean  continued Another use of the geometric mean is to determine the percent increase in sales, production or other business or economic series from one time period to another.  3-
Example 8 The total number of females enrolled in American colleges increased from 755,000 in 1992 to 835,000 in 2000. That is, the geometric mean rate of increase is 1.27%. 3-
Describing data = Measures of Dispersion Range = Largest Value – Smaller Value Mean Deviation = The Arithmetic mean of the absolute values of t he deviation from the arithmetic mean = E l X- X’ l    n where E is sigma [sum of]; X = value of each observation;  X’ = arithmetic  mean of the values; n is number of observation ; l l indicates absolute values  Variance  = The arithmetic mean of the of the squared deviation from the mean Standard Deviation  =  The Square Root of the variance
Measures of Dispersion Dispersion   refers to the spread or variability in the data. Measures of dispersion include the following:  range ,  mean deviation ,  variance , and  standard deviation . Range  = Largest value – Smallest value 3-
Example 9 The following represents the current year’s Return on Equity of the 25 companies in an investor’s portfolio. Highest value: 22.1 Lowest value:  -8.1 Range =  Highest value – lowest value =  22.1-(-8.1) =  30.2 3-
Mean Deviation Mean Deviation   The arithmetic mean of the absolute values of the deviations from the arithmetic mean. The main features of the  mean deviation  are: ,[object Object],[object Object],[object Object],3-
Example 10 The weights of a sample of crates containing books for the INSANIAH Library (in pounds ) are:  103, 97, 101, 106, 103 Find the mean deviation. X = 102 The mean deviation is: 3-
Variance and standard Deviation Variance :   the arithmetic mean of the squared deviations from the mean. Standard deviation :   The square root of the variance. 3-
Population Variance ,[object Object],[object Object],[object Object],The major characteristics of the  Population Variance  are: 3-
Variance and standard deviation Population Variance  formula: X is the value of an observation in the population m  is the arithmetic mean of the population N is the number of observations in the population Population Standard Deviation  formula: 3-
Example 9 continued In Example 9, the variance and standard deviation are: 3-
Sample variance and standard deviation Sample variance (s 2 ) Sample standard deviation (s) 3-
Example 11 The hourly wages earned by a sample of five students are: $7, $5, $11, $8, $6. Find the sample variance and standard deviation. 3-
 
 
Cumulative Frequency Polygon Histogram & Frequency Polygon
Example 12 A sample of ten movie  in  TV tallied the total number of movies showing in all TV channel last week.  Compute the mean number of movies showing. 3-
The Median of Grouped Data where  L  is the lower limit of the median class,  CF  is the cumulative frequency preceding the median class,  f  is the frequency of the median class, and  i  is the median class interval.  The  Median  of a sample of data organized in a frequency distribution is computed by: 3-
Describing Data – Measures of Location [For Grouped Data] MEAN MEDIAN  MODE
The Mean of Grouped Data ,[object Object],3-
Example 12 A sample of ten movie theaters in a large metropolitan area tallied the total number of movies showing last week.  Compute the mean number of movies showing. 3-
The Median of Grouped Data where  L  is the lower limit of the median class,  CF  is the cumulative frequency preceding the median class,  f  is the frequency of the median class, and  i  is the median class interval.  The  Median  of a sample of data organized in a frequency distribution is computed by: 3-
Finding the Median Class To determine the median class for grouped data Construct a cumulative frequency distribution. Divide the total number of data values by 2. Determine which class will contain this value.  For example, if  n =50, 50/2 = 25, then determine which class will contain the 25 th  value. 3-
Example 12 continued 3-
Example 12 continued From the table,  L =5,  n =10,  f =3,  i =2,  CF =3 3-
BUSINESS STATISTICS ; LECTURE NOTE  [ ShayaaOthman ]
 
1 de 59

Recomendados

Statistics in research por
Statistics in researchStatistics in research
Statistics in researchBalaji P
38K vistas53 diapositivas
Quantitative Data analysis por
Quantitative Data analysisQuantitative Data analysis
Quantitative Data analysisMuhammad Musawar Ali
2.5K vistas16 diapositivas
8. validity and reliability of research instruments por
8. validity and reliability of research instruments8. validity and reliability of research instruments
8. validity and reliability of research instrumentsRazif Shahril
66K vistas19 diapositivas
Population and Sampling.pptx por
Population and Sampling.pptxPopulation and Sampling.pptx
Population and Sampling.pptxVijayalakshmi Murugesan
1.1K vistas35 diapositivas
Data analysis and Presentation por
Data analysis and PresentationData analysis and Presentation
Data analysis and PresentationJignesh Kariya
19.2K vistas95 diapositivas
Statistical analysis, presentation on Data Analysis in Research. por
Statistical analysis, presentation on Data Analysis in Research.Statistical analysis, presentation on Data Analysis in Research.
Statistical analysis, presentation on Data Analysis in Research.Leena Gauraha
1.2K vistas9 diapositivas

Más contenido relacionado

La actualidad más candente

data interpretation por
data interpretationdata interpretation
data interpretationNaatchammai Ramanathan
2.3K vistas24 diapositivas
Method of data collection and analysis based in Grounded Theory por
Method of data collection and analysis based in Grounded TheoryMethod of data collection and analysis based in Grounded Theory
Method of data collection and analysis based in Grounded Theoryprayslide
5.5K vistas10 diapositivas
Understanding statistics in research por
Understanding statistics in researchUnderstanding statistics in research
Understanding statistics in researchDr. Senthilvel Vasudevan
8.9K vistas37 diapositivas
SURVEY RESEARCH DESIGN por
SURVEY RESEARCH DESIGNSURVEY RESEARCH DESIGN
SURVEY RESEARCH DESIGNMAHESWARI JAIKUMAR
29K vistas28 diapositivas
Quantitative Research por
Quantitative ResearchQuantitative Research
Quantitative Researchsyerencs
4.1K vistas22 diapositivas
statistics in nursing por
 statistics in nursing statistics in nursing
statistics in nursingPratibha Srivastava
1.4K vistas24 diapositivas

La actualidad más candente(20)

Method of data collection and analysis based in Grounded Theory por prayslide
Method of data collection and analysis based in Grounded TheoryMethod of data collection and analysis based in Grounded Theory
Method of data collection and analysis based in Grounded Theory
prayslide5.5K vistas
Quantitative Research por syerencs
Quantitative ResearchQuantitative Research
Quantitative Research
syerencs4.1K vistas
Tools Of Data Collection.pptx por PariNaz10
Tools Of Data Collection.pptxTools Of Data Collection.pptx
Tools Of Data Collection.pptx
PariNaz1067 vistas
Inferential statistics.ppt por Nursing Path
Inferential statistics.pptInferential statistics.ppt
Inferential statistics.ppt
Nursing Path34.1K vistas
Concept of Inferential statistics por Sarfraz Ahmad
Concept of Inferential statisticsConcept of Inferential statistics
Concept of Inferential statistics
Sarfraz Ahmad8.8K vistas
Data analysis powerpoint por jamiebrandon
Data analysis powerpointData analysis powerpoint
Data analysis powerpoint
jamiebrandon121.5K vistas
Inferential Statistics por ewhite00
Inferential StatisticsInferential Statistics
Inferential Statistics
ewhite006.4K vistas
Frequency Distributions por jasondroesch
Frequency DistributionsFrequency Distributions
Frequency Distributions
jasondroesch15K vistas
Steps in research process por Nasir Mughal
Steps in research processSteps in research process
Steps in research process
Nasir Mughal127.5K vistas
Research design and types of research design final ppt por Prahlada G Bhakta
Research design and types of research design final pptResearch design and types of research design final ppt
Research design and types of research design final ppt
Prahlada G Bhakta300.3K vistas
12 data-collection-methods por planas11111
12 data-collection-methods12 data-collection-methods
12 data-collection-methods
planas111111.4K vistas

Similar a DATA COLLECTION IN RESEARCH

Engineering Statistics por
Engineering Statistics Engineering Statistics
Engineering Statistics Bahzad5
230 vistas84 diapositivas
Bio statistics por
Bio statisticsBio statistics
Bio statisticsNc Das
3.9K vistas40 diapositivas
Biostatistics por
BiostatisticsBiostatistics
Biostatisticspriyarokz
35.9K vistas47 diapositivas
CABT Math 8 measures of central tendency and dispersion por
CABT Math 8   measures of central tendency and dispersionCABT Math 8   measures of central tendency and dispersion
CABT Math 8 measures of central tendency and dispersionGilbert Joseph Abueg
3.6K vistas50 diapositivas
Topic-1-Review-of-Basic-Statistics.pptx por
Topic-1-Review-of-Basic-Statistics.pptxTopic-1-Review-of-Basic-Statistics.pptx
Topic-1-Review-of-Basic-Statistics.pptxJohnLester81
11 vistas31 diapositivas
Basic Statistical Descriptions of Data.pptx por
Basic Statistical Descriptions of Data.pptxBasic Statistical Descriptions of Data.pptx
Basic Statistical Descriptions of Data.pptxAnusuya123
105 vistas22 diapositivas

Similar a DATA COLLECTION IN RESEARCH(20)

Engineering Statistics por Bahzad5
Engineering Statistics Engineering Statistics
Engineering Statistics
Bahzad5230 vistas
Bio statistics por Nc Das
Bio statisticsBio statistics
Bio statistics
Nc Das3.9K vistas
Biostatistics por priyarokz
BiostatisticsBiostatistics
Biostatistics
priyarokz35.9K vistas
CABT Math 8 measures of central tendency and dispersion por Gilbert Joseph Abueg
CABT Math 8   measures of central tendency and dispersionCABT Math 8   measures of central tendency and dispersion
CABT Math 8 measures of central tendency and dispersion
Gilbert Joseph Abueg3.6K vistas
Topic-1-Review-of-Basic-Statistics.pptx por JohnLester81
Topic-1-Review-of-Basic-Statistics.pptxTopic-1-Review-of-Basic-Statistics.pptx
Topic-1-Review-of-Basic-Statistics.pptx
JohnLester8111 vistas
Basic Statistical Descriptions of Data.pptx por Anusuya123
Basic Statistical Descriptions of Data.pptxBasic Statistical Descriptions of Data.pptx
Basic Statistical Descriptions of Data.pptx
Anusuya123105 vistas
Machine learning pre requisite por Ram Singh
Machine learning pre requisiteMachine learning pre requisite
Machine learning pre requisite
Ram Singh75 vistas
Statistics and types of statistics .docx por Hwre Idrees
Statistics and types of statistics .docxStatistics and types of statistics .docx
Statistics and types of statistics .docx
Hwre Idrees26 vistas
Lecture_4_-_Data_Management_using_Statistics(3).pptx por ssuser10eca22
Lecture_4_-_Data_Management_using_Statistics(3).pptxLecture_4_-_Data_Management_using_Statistics(3).pptx
Lecture_4_-_Data_Management_using_Statistics(3).pptx
ssuser10eca2212 vistas
Soni_Biostatistics.ppt por Ogunsina1
Soni_Biostatistics.pptSoni_Biostatistics.ppt
Soni_Biostatistics.ppt
Ogunsina151 vistas
Mat 255 chapter 3 notes por adrushle
Mat 255 chapter 3 notesMat 255 chapter 3 notes
Mat 255 chapter 3 notes
adrushle2.5K vistas
Statistical treatment and data processing copy por SWEET PEARL GAMAYON
Statistical treatment and data processing   copyStatistical treatment and data processing   copy
Statistical treatment and data processing copy
SWEET PEARL GAMAYON18.4K vistas
UNIT I -Data and Data Collection.ppt por CHRISCONFORTE
UNIT I -Data and Data Collection.pptUNIT I -Data and Data Collection.ppt
UNIT I -Data and Data Collection.ppt
CHRISCONFORTE9 vistas

Más de SHAYA'A OTHMAN MANAGEMENT & RESEARCH METHODOLOGY

AN OVERVIEW OF ISLAMIC EDUCATION FOR HUMAN EXCELLENCE por
AN OVERVIEW OF ISLAMIC EDUCATION FOR HUMAN EXCELLENCEAN OVERVIEW OF ISLAMIC EDUCATION FOR HUMAN EXCELLENCE
AN OVERVIEW OF ISLAMIC EDUCATION FOR HUMAN EXCELLENCESHAYA'A OTHMAN MANAGEMENT & RESEARCH METHODOLOGY
2.7K vistas27 diapositivas
Managing Waqf in Turkey and Malaysia for Educational Development. The Best Pr... por
Managing Waqf in Turkey and Malaysia for Educational Development. The Best Pr...Managing Waqf in Turkey and Malaysia for Educational Development. The Best Pr...
Managing Waqf in Turkey and Malaysia for Educational Development. The Best Pr...SHAYA'A OTHMAN MANAGEMENT & RESEARCH METHODOLOGY
2.3K vistas27 diapositivas
Towards Strengthening Economics and Halal Spectrums por
Towards Strengthening Economics  and Halal Spectrums Towards Strengthening Economics  and Halal Spectrums
Towards Strengthening Economics and Halal Spectrums SHAYA'A OTHMAN MANAGEMENT & RESEARCH METHODOLOGY
585 vistas28 diapositivas
Islamic Finance and Opportunities Projected to 2020 por
Islamic Finance and Opportunities Projected to 2020Islamic Finance and Opportunities Projected to 2020
Islamic Finance and Opportunities Projected to 2020SHAYA'A OTHMAN MANAGEMENT & RESEARCH METHODOLOGY
1.6K vistas38 diapositivas
APPLICATION OF MAQASID AL SHARIAH IN STRATEGIC MANAGEMENT INCLUDING MAQASID A... por
APPLICATION OF MAQASID AL SHARIAH IN STRATEGIC MANAGEMENT INCLUDING MAQASID A...APPLICATION OF MAQASID AL SHARIAH IN STRATEGIC MANAGEMENT INCLUDING MAQASID A...
APPLICATION OF MAQASID AL SHARIAH IN STRATEGIC MANAGEMENT INCLUDING MAQASID A...SHAYA'A OTHMAN MANAGEMENT & RESEARCH METHODOLOGY
10.5K vistas57 diapositivas
STATISTICS & MANAGERIAL ETHICS : OVERVIEW OF PROBLEMS AND TOTAL SOLUTIONS IN... por
STATISTICS & MANAGERIAL ETHICS :  OVERVIEW OF PROBLEMS AND TOTAL SOLUTIONS IN...STATISTICS & MANAGERIAL ETHICS :  OVERVIEW OF PROBLEMS AND TOTAL SOLUTIONS IN...
STATISTICS & MANAGERIAL ETHICS : OVERVIEW OF PROBLEMS AND TOTAL SOLUTIONS IN...SHAYA'A OTHMAN MANAGEMENT & RESEARCH METHODOLOGY
2.6K vistas56 diapositivas

Más de SHAYA'A OTHMAN MANAGEMENT & RESEARCH METHODOLOGY(17)

Último

DISTILLATION.pptx por
DISTILLATION.pptxDISTILLATION.pptx
DISTILLATION.pptxAnupkumar Sharma
75 vistas47 diapositivas
11.21.23 Economic Precarity and Global Economic Forces.pptx por
11.21.23 Economic Precarity and Global Economic Forces.pptx11.21.23 Economic Precarity and Global Economic Forces.pptx
11.21.23 Economic Precarity and Global Economic Forces.pptxmary850239
52 vistas9 diapositivas
BUSINESS ETHICS MODULE 1 UNIT I_A.pdf por
BUSINESS ETHICS MODULE 1 UNIT I_A.pdfBUSINESS ETHICS MODULE 1 UNIT I_A.pdf
BUSINESS ETHICS MODULE 1 UNIT I_A.pdfDr Vijay Vishwakarma
92 vistas25 diapositivas
Ask The Expert! Nonprofit Website Tools, Tips, and Technology.pdf por
 Ask The Expert! Nonprofit Website Tools, Tips, and Technology.pdf Ask The Expert! Nonprofit Website Tools, Tips, and Technology.pdf
Ask The Expert! Nonprofit Website Tools, Tips, and Technology.pdfTechSoup
62 vistas28 diapositivas
A Guide to Applying for the Wells Mountain Initiative Scholarship 2023 por
A Guide to Applying for the Wells Mountain Initiative Scholarship 2023A Guide to Applying for the Wells Mountain Initiative Scholarship 2023
A Guide to Applying for the Wells Mountain Initiative Scholarship 2023Excellence Foundation for South Sudan
87 vistas26 diapositivas
JQUERY.pdf por
JQUERY.pdfJQUERY.pdf
JQUERY.pdfArthyR3
107 vistas22 diapositivas

Último(20)

11.21.23 Economic Precarity and Global Economic Forces.pptx por mary850239
11.21.23 Economic Precarity and Global Economic Forces.pptx11.21.23 Economic Precarity and Global Economic Forces.pptx
11.21.23 Economic Precarity and Global Economic Forces.pptx
mary85023952 vistas
Ask The Expert! Nonprofit Website Tools, Tips, and Technology.pdf por TechSoup
 Ask The Expert! Nonprofit Website Tools, Tips, and Technology.pdf Ask The Expert! Nonprofit Website Tools, Tips, and Technology.pdf
Ask The Expert! Nonprofit Website Tools, Tips, and Technology.pdf
TechSoup 62 vistas
JQUERY.pdf por ArthyR3
JQUERY.pdfJQUERY.pdf
JQUERY.pdf
ArthyR3107 vistas
Artificial Intelligence and The Sustainable Development Goals (SDGs) Adoption... por BC Chew
Artificial Intelligence and The Sustainable Development Goals (SDGs) Adoption...Artificial Intelligence and The Sustainable Development Goals (SDGs) Adoption...
Artificial Intelligence and The Sustainable Development Goals (SDGs) Adoption...
BC Chew38 vistas
ANGULARJS.pdf por ArthyR3
ANGULARJS.pdfANGULARJS.pdf
ANGULARJS.pdf
ArthyR352 vistas
Guess Papers ADC 1, Karachi University por Khalid Aziz
Guess Papers ADC 1, Karachi UniversityGuess Papers ADC 1, Karachi University
Guess Papers ADC 1, Karachi University
Khalid Aziz105 vistas
Introduction to AERO Supply Chain - #BEAERO Trainning program por Guennoun Wajih
Introduction to AERO Supply Chain  - #BEAERO Trainning programIntroduction to AERO Supply Chain  - #BEAERO Trainning program
Introduction to AERO Supply Chain - #BEAERO Trainning program
Guennoun Wajih123 vistas
NodeJS and ExpressJS.pdf por ArthyR3
NodeJS and ExpressJS.pdfNodeJS and ExpressJS.pdf
NodeJS and ExpressJS.pdf
ArthyR350 vistas

DATA COLLECTION IN RESEARCH

  • 1. 1. Overview of Statistics & Collection of Data
  • 2.  
  • 3. Shaya’a Othman Definition of Statistics “ Statistics is a scientific method of collecting , organizing , presenting , analyzing and interpreting of numerical information, developed from mathematical theory of probability, to assist in making effective and efficient decision.” Definition by Shaya'a Othman,
  • 4.
  • 5.
  • 8.
  • 9. 1.Two-tailed test if alternative hypothesis does not state direction [ greater or less]. 2. One-tailed test if alternative state direction.
  • 10.  
  • 11. Possibility Two Type of Errors [Type I and Type II]
  • 12.  
  • 13. - - - - - - - STATISTICAL TEST OF HYPOTHESIS One-Sample Tests of Hypothesis Two-Samples Tests of Hypothesis Large sample [ n more than 30] Small Sample [ n less than 30] Large Sample [n more than 30 ] Small Sample [n less than 30] Two-Tail Test [No direction] z = x – u σ /√n Using normal distribution table t = x - u s/ √n df = n-1 Using t distribution table z = x₁ - x₂ ______ √ [ ( σ₁ ² / n₁ ) +( σ₂² / n₂)] t = x₁ - x₂ ______ √ [ (s ₁² /n₁ ) +(s ₂² / n₂ )] df = n + n - 2 Using t- distribution table One-Tail Test [With direction : Greater or less than]
  • 14. Hypothesis – “A supposition or proposed explanation made on the basis of limited evidence as a starting point for further investigation . Oxford Dictionary Hypothesis – “ A statement or conjecture which is neither true nor false, subjected to be verified “ Shayaa Othman, KUIS Hypothesis – “A statement about a population parameter developed for the purpose of testing “ Douglas A Lind Statistical Techniques on Business Economics Hypothesis Testing – “A procedure based on sample evidence and probability theory to determine whether the hypothesis is a reasonable statement. “ Douglas A Lind statistical Techniques on Business Economics Null Hypothesis – “A statement about a the value of a population parameter.” Douglas A Lind statistical Techniques on Business Economics Alternative Hypothesis – “A statement that is accepted if the sample data provide sufficient evidence that the null hypothesis is false.” Douglas A Lind statistical Techniques on Business Economics
  • 15. Describing Data – Measures of Location Population Mean = Sum of all the values in the Population Number of Values in the Population Sample Mean = Sum of values in the Sample = Σ x Number of Values in the Sample n Weighted Mean = Σ[wx] Σw Parameter = A characteristic of Population Median = The midpoint of values after they have been ordered from the smallest to the highest Mode = The value of observations that appears most frequently
  • 16. Describing data = Measures of Dispersion Range = Largest Value – Smaller Value Mean Deviation = The Arithmetic mean of the absolute values of the deviation from the arithmetic mean = l X- X l n where is sigma [sum of]; X = value of each observation; X = arithmetic mean of the values; n is number of observation ; l l indicates absolute values Variance = The arithmetic mean of the of the squared deviation from the mean Standard Deviation = The Square Root of the variance Location of Percentiles = L p = (n+1) P 100 M M
  • 17.
  • 18.
  • 19. Example 1 Find the mean mileage for the cars. A Parameter is a measurable characteristic of a population. AHMAD’s family owns four cars. The following is the current mileage on each of the four cars. 56,000 23,000 42,000 73,000 3-
  • 20. Sample Mean where n is the total number of values in the sample. For ungrouped data, the sample mean is the sum of all the sample values divided by the number of sample values: 3-
  • 21. Example 2 A statistic is a measurable characteristic of a sample. A sample of five executives received the following bonus last year ($000): 14.0, 15.0, 17.0, 16.0, 15.0 3-
  • 22. Example 4 During a one hour period on a hot Saturday afternoon in Langkawi, Ahmad sold fifty drinks. He sold five drinks for $0.50,; fifteen for $0.75, fifteen for $0.90, and fifteen for $1.10. Compute the weighted mean of the price of the drinks. 3-
  • 23. The Median There are as many values above the median as below it in the data array. For an even set of values, the median will be the arithmetic average of the two middle numbers and is found at the (n+1)/2 ranked observation. The Median is the midpoint of the values after they have been ordered from the smallest to the largest. 3-
  • 24. The median (continued) The ages for a sample of five INSANIAH students visiting Islamic Artifact Exhibition: 21, 25, 19, 20, 22,18, 27. Arranging the data in ascending order gives: 18,19, 20, 21, 22, 25, 27 Thus median = 21. 3-
  • 25. Example 5 Arranging the data in ascending order gives: 73, 76, 80 Thus the median is 76. The heights of 3 INSANIAH Lecturers, in inches, are: 76, 73, 80. The median is found at the (n+1)/2 = (3+1)/2 =2 th data point. 3-
  • 26. The Mode: Example 6 Example 6 : The exam scores for ten students are: 81, 93, 84, 75, 68, 87, 81, 75, 81, 87. Because the score of 81 occurs the most often , it is the mode. Data can have more than one mode. If it has two modes, it is referred to as bimodal, three modes, trimodal, and the like. The Mode is another measure of location and represents the value of the observation that appears most frequently. 3-
  • 27. The Relative Positions of the Mean, Median, and Mode Symmetric distribution : A distribution having the same shape on either side of the center Skewed distribution : One whose shapes on either side of the center differ; a nonsymmetrical distribution. Can be positively or negatively skewed, or bimodal 3-
  • 28.
  • 29.
  • 30.
  • 31. Geometric Mean The geometric mean is used to average percents, indexes, and relatives. The Geometric Mean ( GM ) of a set of n numbers is defined as the nth root of the product of the n numbers. The formula is: 3-
  • 32. Example 7 The interest rate on three bonds were 5, 21, and 4 percent. The arithmetic mean is (5+21+4)/3 =10.0. The geometric mean is The GM gives a more conservative profit figure because it is not heavily weighted by the rate of 21percent. 3-
  • 33. Geometric Mean continued Another use of the geometric mean is to determine the percent increase in sales, production or other business or economic series from one time period to another. 3-
  • 34. Example 8 The total number of females enrolled in American colleges increased from 755,000 in 1992 to 835,000 in 2000. That is, the geometric mean rate of increase is 1.27%. 3-
  • 35. Describing data = Measures of Dispersion Range = Largest Value – Smaller Value Mean Deviation = The Arithmetic mean of the absolute values of t he deviation from the arithmetic mean = E l X- X’ l n where E is sigma [sum of]; X = value of each observation; X’ = arithmetic mean of the values; n is number of observation ; l l indicates absolute values Variance = The arithmetic mean of the of the squared deviation from the mean Standard Deviation = The Square Root of the variance
  • 36. Measures of Dispersion Dispersion refers to the spread or variability in the data. Measures of dispersion include the following: range , mean deviation , variance , and standard deviation . Range = Largest value – Smallest value 3-
  • 37. Example 9 The following represents the current year’s Return on Equity of the 25 companies in an investor’s portfolio. Highest value: 22.1 Lowest value: -8.1 Range = Highest value – lowest value = 22.1-(-8.1) = 30.2 3-
  • 38.
  • 39. Example 10 The weights of a sample of crates containing books for the INSANIAH Library (in pounds ) are: 103, 97, 101, 106, 103 Find the mean deviation. X = 102 The mean deviation is: 3-
  • 40. Variance and standard Deviation Variance : the arithmetic mean of the squared deviations from the mean. Standard deviation : The square root of the variance. 3-
  • 41.
  • 42. Variance and standard deviation Population Variance formula: X is the value of an observation in the population m is the arithmetic mean of the population N is the number of observations in the population Population Standard Deviation formula: 3-
  • 43. Example 9 continued In Example 9, the variance and standard deviation are: 3-
  • 44. Sample variance and standard deviation Sample variance (s 2 ) Sample standard deviation (s) 3-
  • 45. Example 11 The hourly wages earned by a sample of five students are: $7, $5, $11, $8, $6. Find the sample variance and standard deviation. 3-
  • 46.  
  • 47.  
  • 48. Cumulative Frequency Polygon Histogram & Frequency Polygon
  • 49. Example 12 A sample of ten movie in TV tallied the total number of movies showing in all TV channel last week. Compute the mean number of movies showing. 3-
  • 50. The Median of Grouped Data where L is the lower limit of the median class, CF is the cumulative frequency preceding the median class, f is the frequency of the median class, and i is the median class interval. The Median of a sample of data organized in a frequency distribution is computed by: 3-
  • 51. Describing Data – Measures of Location [For Grouped Data] MEAN MEDIAN MODE
  • 52.
  • 53. Example 12 A sample of ten movie theaters in a large metropolitan area tallied the total number of movies showing last week. Compute the mean number of movies showing. 3-
  • 54. The Median of Grouped Data where L is the lower limit of the median class, CF is the cumulative frequency preceding the median class, f is the frequency of the median class, and i is the median class interval. The Median of a sample of data organized in a frequency distribution is computed by: 3-
  • 55. Finding the Median Class To determine the median class for grouped data Construct a cumulative frequency distribution. Divide the total number of data values by 2. Determine which class will contain this value. For example, if n =50, 50/2 = 25, then determine which class will contain the 25 th value. 3-
  • 57. Example 12 continued From the table, L =5, n =10, f =3, i =2, CF =3 3-
  • 58. BUSINESS STATISTICS ; LECTURE NOTE [ ShayaaOthman ]
  • 59.