SlideShare a Scribd company logo
1 of 20
CHI SQUARE & ANOVA
DIFFERENCE BETWEEN CHI SQUARE & ANOVA
BirinderSingh,AssistantProfessor,PCTE
Ludhiana
2
 It enables us to test
whether more than two
population proportions
can be considered
equal
 Analysis of Variance
(Anova) enables us to
test whether more than
two population means
can be considered
equal.
Chi Square (χ2 Test) Anova (F Test)
CHARACTERISTICS OF CHI SQUARE
 Every Chi square distribution extends indefinitely to right from
zero.
 It is skewed to right
 As df increases, Chi square curve become more bell shaped and
approaches normal distribution.
 Its mean is degree of freedom
 Its variance is twice degree of freedom
3
BirinderSingh,AssistantProfessor,PCTE
Ludhiana
CHI SQUARE (Χ2 TEST)
 Chi Square Test deals with analysis of categorical data in terms
of frequencies / proportions / percentages.
 It is primarily of three types:
 Test of Homogeneity: To determine whether different population are
similar w.r.t some characteristics.
 Test of Independence: Tests whether the characteristics of the
elements of the same population are related or independent.
 Test of Goodness of Fit: To determine whether there is a significant
difference between an observed frequency distribution and theoretical
probability distribution.
4
BirinderSingh,AssistantProfessor,PCTE
Ludhiana
COMPUTATIONAL PROCEDURE – CHI SQUARE
TEST
 Formulate Null & Alternative Hypothesis
 State type of test
 Select LOS
 Compute expected frequencies assuming H0 to be true.
 Compute χ2 calculated value using
 𝜒2
cal =
(𝑓𝑜 −𝑓𝑒)2
𝑓𝑒
 Extract 𝜒2
crit value from table
 Compare 𝜒2
cal & 𝜒2
crit and make decision.
5
BirinderSingh,AssistantProfessor,PCTE
Ludhiana
CHI SQUARE – TEST OF HOMOGENEITY
 Based on a study, it is expected that 50% of the students opt for
marketing, 30% for finance and 20% for HR. In a sample for 100,
it was observed that 61, 24 and 15 opt for these subjects
respectively. Do you agree with study findings at 10% LOS?
(𝜒2
cal = 4.87)
(𝜒2
crit = 4.605)
(Rejected)
6
BirinderSingh,AssistantProfessor,PCTE
Ludhiana
CHI SQUARE – TEST OF HOMOGENEITY
 A shoe seller has received the consignment of the order that he
had placed for 10000 pair of different sizes. Without physically
segregating the sizes and counting no. of pair of shoes of each
size, he wants to ascertain that consignment received is as per
order . Check at 5% LOS.
(𝜒2
cal = 6.87)
(𝜒2
crit = 12.592)
(Accepted)
7
BirinderSingh,AssistantProfessor,PCTE
Ludhiana
Size 4 5 6 7 8 9 10
Order qty 500 1500 2000 2000 2000 1500 500
Rec. qty 700 1800 2200 2000 2000 1300 0
CHI SQUARE – TEST OF INDEPENDENCE
FORMULAE TO BE USED
 Computation of expected frequency
 Fe = (RT x CT) / GT where RT = Row Total
CT = Column Total
GT = Grand Total
 Computation of degree of freedom
 Df = (r – 1) (c – 1)
8
BirinderSingh,AssistantProfessor,PCTE
Ludhiana
CHI SQUARE – TEST OF INDEPENDENCE
 Following data was collected when a survey was carried out on
preference for formal wear in work place:
Is there difference in preference due to sex? Check at 20% LOS.
(𝜒2
cal = 0.2522)
(𝜒2
crit = 1.642)
(Accepted)
9
BirinderSingh,AssistantProfessor,PCTE
Ludhiana
Gents Ladies
Yes 520 60
No 80 11
CHI SQUARE – TEST OF INDEPENDENCE
 Sample data in respect of viewership of a TV Program for various
age groups was collected and is as follows:
Is
viewership of program independent of age ? Check at 5% LOS.
(𝜒2
cal = 26.01)
(𝜒2
crit = 9.488)
(Rejected)
10
BirinderSingh,AssistantProfessor,PCTE
Ludhiana
15-25 26-40 41-50
Always 75 180 105
Sometimes 50 60 40
Never 25 20 5
CHI SQUARE – TEST OF GOODNESS OF FIT
 Gordon Company requires that college seniors who are seeking
positions will be interviewed. For staffing purposes, the director of
recruitment thinks that the interview process can be approximated
by a binomial distribution with p = 0.40 i.e. Can he conclude that
BD at p = 0.4 provides a good description of observed
frequencies. Check at 20% LOS.
(𝜒2
cal = 5.041)
(𝜒2
crit = 4.642)
(Rejected)
11
BirinderSingh,AssistantProfessor,PCTE
Ludhiana
ANALYSIS OF VARIANCE (ANOVA)
 It enables us to test for the significance of the differences among
more than two sample means.
 Using Anova, we will be able to make inferences about whether
our samples are drawn from population having the same mean.
 Examples:
 Comparing the mileage of five different brands of cars
 Testing which of the four different training methods produces the fastest
learning record
 Comparing the average salary of three different companies
 In each of these cases, we would compare the means of more
than two sample means.
 F-Distribution is used to analyze certain situations
12
BirinderSingh,AssistantProfessor,PCTE
Ludhiana
ASSUMPTIONS
 Populations are normally distributed
 Samples are random and independent
 Population Variances are equal.
13
BirinderSingh,AssistantProfessor,PCTE
Ludhiana
COMPUTATIONAL PROCEDURE IN ANOVA
(ONE WAY)
 Define Null & Alternative Hypothesis
 Select estimator & determine its distribution
 Select Significance Level
 Calculate Sum of all observations: T = Ʃxi
 Calculate correction factor: CF = T2 / nT where nT = sample size
 Calculate Sum of squares total, SST = Σ(Σ𝑥𝑖
2) − CF
 Calculate Sum of squares between columns, SSB = Σ((Σ𝑥𝑖)2
/𝑛𝑖) − CF
 Calculate Sum of squares within columns, SSW = SST – SSB
 Calculate Mean of squares between groups, MSB = SSB / (k – 1) where k
= no. of samples
 Calculate Mean of squares within groups, MSW = SSW / (nT – k)
 Calculate Fcal = MSB / MSW
 Calculate Fcrit = F(dfnum, dfden, α) where dfnum = k – 1, dfden = nT – k
 Compare Fcal & Fcrit and make your statistical & managerial decisions
14
BirinderSingh,AssistantProfessor,PCTE
Ludhiana
PRACTICE PROBLEM – ONE WAY ANOVA
 Three group of students are taught a statistical technique by three
different methods. When tested on one problem, sample scores of
3 students selected at random from each of the group as under:
At 0.05 LOS, do the means
of populations taught by
three methods differ?
(Fcal = 1.5, Fcrit = 5.14)
(Accepted)
15
BirinderSingh,AssistantProfessor,PCTE
Ludhiana
Group 1 Group 2 Group 3
3 5 3
4 7 7
5 6 5
16
BirinderSingh,AssistantProfessor,PCTE
Ludhiana
PRACTICE PROBLEM – ONE WAY ANOVA
 IAA wanted to find out if average sale of small cars namely Swift,
Jazz & Figo is same in Tier II cities. It obtained quarterly sales
data from 5 such cities A,B,C,D,E as shown. What conclusion can
be drawn at 0.05 LOS?
(Fcal = 1.5, Fcrit = 5.14)
(Accepted)
17
BirinderSingh,AssistantProfessor,PCTE
Ludhiana
City Swift Jazz Figo
A 32 26 30
B 28 34 -
C 25 - 28
D 34 33 32
E 31 31 26
COMPUTATIONAL PROCEDURE IN ANOVA
(TWO WAY)
 Define Null & Alternative Hypothesis
 Select estimator & determine its distribution
 Select Significance Level
 Calculate Sum of all observations: T = Ʃxi
 Calculate correction factor: CF = T2 / nT where nT = sample size
 Calculate Sum of squares columns, SSC = Σ((Σ𝑥𝑗)2
/𝑛𝑖) − CF
 Calculate Sum of squares rows, SSR = Σ((Σ𝑥𝑖)2/𝑛𝑗) − CF
 Calculate Sum of squares total, SST = Σ(Σ𝑥𝑖
2
) − CF
 Calculate Sum of square error, SSE = SST – (SSC + SSR)
 Calculate Mean of squares column, MSC = SSC / (c – 1)
 Calculate Mean of squares rows, MSR = SSR / (r – 1)
 Calculate Mean of squares error, MSE = SSE / (c – 1) (r – 1)
 Calculate Fcal = MSC/MSE & MSR/MSE
 Calculate Fcrit = F(dfnum, dfden, α) where dfnum = c-1 or r-1, dfden = (c-1)(r-1)
 Compare Fcal & Fcrit and make your statistical & managerial decisions 18
BirinderSingh,AssistantProfessor,PCTE
Ludhiana
PRACTICE PROBLEM – TWO WAY ANOVA
 Three salesmen Kallu, Lallu & Mallu were assigned three cities
A,B & C. The data on sales for quarter ending June 2017
achieved by them is:
Is there any significant difference
in sales made by 3 of them?
Is there any significant difference
in sales made in 3 cities?
Check at 0.05 LOS?
(F1cal = 9.23, F1crit = 6.94)
(F2cal = 3.25, F2crit = 6.94)
(Rejected) & (Accepted)

19
BirinderSingh,AssistantProfessor,PCTE
Ludhiana
City Kallu Mallu Lallu
A 4 3 4
B 3 2 5
C 5 3 6
DECISION FLOW DIAGRAM -
ESTIMATION
20
BirinderSingh,AssistantProfessor,PCTE
Ludhiana
Start
Is n≥30
Is pop.
Known to
be normally
distributed
Use ‘Z’ table Stop
Use a Statistician
Is SD
known
?
Use ‘Z’
table
Stop
Use ‘t’
table
Stop

More Related Content

What's hot

Chi square test final
Chi square test finalChi square test final
Chi square test finalHar Jindal
 
Mann Whitney U Test | Statistics
Mann Whitney U Test | StatisticsMann Whitney U Test | Statistics
Mann Whitney U Test | StatisticsTransweb Global Inc
 
STATISTICS: Hypothesis Testing
STATISTICS: Hypothesis TestingSTATISTICS: Hypothesis Testing
STATISTICS: Hypothesis Testingjundumaug1
 
Wilcoxon signed rank test
Wilcoxon signed rank testWilcoxon signed rank test
Wilcoxon signed rank testBiswash Sapkota
 
Analysis of variance ppt @ bec doms
Analysis of variance ppt @ bec domsAnalysis of variance ppt @ bec doms
Analysis of variance ppt @ bec domsBabasab Patil
 
9. basic concepts_of_one_way_analysis_of_variance_(anova)
9. basic concepts_of_one_way_analysis_of_variance_(anova)9. basic concepts_of_one_way_analysis_of_variance_(anova)
9. basic concepts_of_one_way_analysis_of_variance_(anova)Irfan Hussain
 
NULL AND ALTERNATIVE HYPOTHESIS.pptx
NULL AND ALTERNATIVE HYPOTHESIS.pptxNULL AND ALTERNATIVE HYPOTHESIS.pptx
NULL AND ALTERNATIVE HYPOTHESIS.pptx04ShainaSachdeva
 
F Distribution
F  DistributionF  Distribution
F Distributionjravish
 
Sampling Variability And The Precision Of A Sample by Dr Sindhu Almas copy.pptx
Sampling Variability And The Precision Of A Sample by Dr Sindhu Almas copy.pptxSampling Variability And The Precision Of A Sample by Dr Sindhu Almas copy.pptx
Sampling Variability And The Precision Of A Sample by Dr Sindhu Almas copy.pptxDrSindhuAlmas
 
P value, Power, Type 1 and 2 errors
P value, Power, Type 1 and 2 errorsP value, Power, Type 1 and 2 errors
P value, Power, Type 1 and 2 errorsRizwan S A
 

What's hot (20)

Chi -square test
Chi -square testChi -square test
Chi -square test
 
Chi square test final
Chi square test finalChi square test final
Chi square test final
 
Chi square test
Chi square testChi square test
Chi square test
 
Correlation Analysis
Correlation AnalysisCorrelation Analysis
Correlation Analysis
 
Statistical analysis
Statistical  analysisStatistical  analysis
Statistical analysis
 
Mann Whitney U Test | Statistics
Mann Whitney U Test | StatisticsMann Whitney U Test | Statistics
Mann Whitney U Test | Statistics
 
STATISTICS: Hypothesis Testing
STATISTICS: Hypothesis TestingSTATISTICS: Hypothesis Testing
STATISTICS: Hypothesis Testing
 
F test
F testF test
F test
 
Wilcoxon signed rank test
Wilcoxon signed rank testWilcoxon signed rank test
Wilcoxon signed rank test
 
In Anova
In  AnovaIn  Anova
In Anova
 
Analysis of variance ppt @ bec doms
Analysis of variance ppt @ bec domsAnalysis of variance ppt @ bec doms
Analysis of variance ppt @ bec doms
 
Sample and sample size
Sample and sample sizeSample and sample size
Sample and sample size
 
9. basic concepts_of_one_way_analysis_of_variance_(anova)
9. basic concepts_of_one_way_analysis_of_variance_(anova)9. basic concepts_of_one_way_analysis_of_variance_(anova)
9. basic concepts_of_one_way_analysis_of_variance_(anova)
 
NULL AND ALTERNATIVE HYPOTHESIS.pptx
NULL AND ALTERNATIVE HYPOTHESIS.pptxNULL AND ALTERNATIVE HYPOTHESIS.pptx
NULL AND ALTERNATIVE HYPOTHESIS.pptx
 
Tests of significance
Tests of significanceTests of significance
Tests of significance
 
Standard error
Standard error Standard error
Standard error
 
F Distribution
F  DistributionF  Distribution
F Distribution
 
Student t test
Student t testStudent t test
Student t test
 
Sampling Variability And The Precision Of A Sample by Dr Sindhu Almas copy.pptx
Sampling Variability And The Precision Of A Sample by Dr Sindhu Almas copy.pptxSampling Variability And The Precision Of A Sample by Dr Sindhu Almas copy.pptx
Sampling Variability And The Precision Of A Sample by Dr Sindhu Almas copy.pptx
 
P value, Power, Type 1 and 2 errors
P value, Power, Type 1 and 2 errorsP value, Power, Type 1 and 2 errors
P value, Power, Type 1 and 2 errors
 

Similar to Chi Square & Anova

Mb0040 statistics for management
Mb0040   statistics for managementMb0040   statistics for management
Mb0040 statistics for managementsmumbahelp
 
parametric test of difference z test f test one-way_two-way_anova
parametric test of difference z test f test one-way_two-way_anova parametric test of difference z test f test one-way_two-way_anova
parametric test of difference z test f test one-way_two-way_anova Tess Anoza
 
Anova by Hazilah Mohd Amin
Anova by Hazilah Mohd AminAnova by Hazilah Mohd Amin
Anova by Hazilah Mohd AminHazilahMohd
 
Statistics and probability
Statistics and probabilityStatistics and probability
Statistics and probabilityShahwarKhan16
 
Dalut ppt. of factorial analysis of variance-b
Dalut ppt. of factorial analysis of variance-bDalut ppt. of factorial analysis of variance-b
Dalut ppt. of factorial analysis of variance-bIan Kris Lastimosa
 
Dalut ppt. of factorial analysis of variance-b
Dalut ppt. of factorial analysis of variance-bDalut ppt. of factorial analysis of variance-b
Dalut ppt. of factorial analysis of variance-bIan Kris Lastimosa
 
Dalut ppt. of factorial analysis of variance-b
Dalut ppt. of factorial analysis of variance-bDalut ppt. of factorial analysis of variance-b
Dalut ppt. of factorial analysis of variance-bIan Kris Lastimosa
 
Analyzing experimental research data
Analyzing experimental research dataAnalyzing experimental research data
Analyzing experimental research dataAtula Ahuja
 
Anova stat 512
Anova stat 512Anova stat 512
Anova stat 512gargnisha
 
Answer SheetISDS 361BHW5YOUR FULL NAME Answer.docx
Answer SheetISDS 361BHW5YOUR FULL NAME  Answer.docxAnswer SheetISDS 361BHW5YOUR FULL NAME  Answer.docx
Answer SheetISDS 361BHW5YOUR FULL NAME Answer.docxrossskuddershamus
 
Week8 Live Lecture for Final Exam
Week8 Live Lecture for Final ExamWeek8 Live Lecture for Final Exam
Week8 Live Lecture for Final ExamBrent Heard
 
anovappt-141025002857-conversion-gate01 (1).pdf
anovappt-141025002857-conversion-gate01 (1).pdfanovappt-141025002857-conversion-gate01 (1).pdf
anovappt-141025002857-conversion-gate01 (1).pdfGorachandChakraborty
 
Penggambaran Data dengan Grafik
Penggambaran Data dengan GrafikPenggambaran Data dengan Grafik
Penggambaran Data dengan Grafikanom0164
 
One-Way ANOVA: Conceptual Foundations
One-Way ANOVA: Conceptual FoundationsOne-Way ANOVA: Conceptual Foundations
One-Way ANOVA: Conceptual Foundationssmackinnon
 

Similar to Chi Square & Anova (20)

Stat2013
Stat2013Stat2013
Stat2013
 
Mb0040 statistics for management
Mb0040   statistics for managementMb0040   statistics for management
Mb0040 statistics for management
 
Data analysis
Data analysisData analysis
Data analysis
 
parametric test of difference z test f test one-way_two-way_anova
parametric test of difference z test f test one-way_two-way_anova parametric test of difference z test f test one-way_two-way_anova
parametric test of difference z test f test one-way_two-way_anova
 
Anova by Hazilah Mohd Amin
Anova by Hazilah Mohd AminAnova by Hazilah Mohd Amin
Anova by Hazilah Mohd Amin
 
Practice test1 solution
Practice test1 solutionPractice test1 solution
Practice test1 solution
 
Statistics and probability
Statistics and probabilityStatistics and probability
Statistics and probability
 
Dalut ppt. of factorial analysis of variance-b
Dalut ppt. of factorial analysis of variance-bDalut ppt. of factorial analysis of variance-b
Dalut ppt. of factorial analysis of variance-b
 
Dalut ppt. of factorial analysis of variance-b
Dalut ppt. of factorial analysis of variance-bDalut ppt. of factorial analysis of variance-b
Dalut ppt. of factorial analysis of variance-b
 
Dalut ppt. of factorial analysis of variance-b
Dalut ppt. of factorial analysis of variance-bDalut ppt. of factorial analysis of variance-b
Dalut ppt. of factorial analysis of variance-b
 
Analyzing experimental research data
Analyzing experimental research dataAnalyzing experimental research data
Analyzing experimental research data
 
Anova stat 512
Anova stat 512Anova stat 512
Anova stat 512
 
One-Way ANOVA
One-Way ANOVAOne-Way ANOVA
One-Way ANOVA
 
Answer SheetISDS 361BHW5YOUR FULL NAME Answer.docx
Answer SheetISDS 361BHW5YOUR FULL NAME  Answer.docxAnswer SheetISDS 361BHW5YOUR FULL NAME  Answer.docx
Answer SheetISDS 361BHW5YOUR FULL NAME Answer.docx
 
ANOVA.pptx
ANOVA.pptxANOVA.pptx
ANOVA.pptx
 
Week8 Live Lecture for Final Exam
Week8 Live Lecture for Final ExamWeek8 Live Lecture for Final Exam
Week8 Live Lecture for Final Exam
 
Anova.pptx
Anova.pptxAnova.pptx
Anova.pptx
 
anovappt-141025002857-conversion-gate01 (1).pdf
anovappt-141025002857-conversion-gate01 (1).pdfanovappt-141025002857-conversion-gate01 (1).pdf
anovappt-141025002857-conversion-gate01 (1).pdf
 
Penggambaran Data dengan Grafik
Penggambaran Data dengan GrafikPenggambaran Data dengan Grafik
Penggambaran Data dengan Grafik
 
One-Way ANOVA: Conceptual Foundations
One-Way ANOVA: Conceptual FoundationsOne-Way ANOVA: Conceptual Foundations
One-Way ANOVA: Conceptual Foundations
 

More from Birinder Singh Gulati (13)

Regression Analysis
Regression AnalysisRegression Analysis
Regression Analysis
 
Probability Distributions
Probability DistributionsProbability Distributions
Probability Distributions
 
Hypothesis Testing
Hypothesis TestingHypothesis Testing
Hypothesis Testing
 
Sampling & Sampling Distribtutions
Sampling & Sampling DistribtutionsSampling & Sampling Distribtutions
Sampling & Sampling Distribtutions
 
Introduction to Quantitative Techniques
Introduction to Quantitative TechniquesIntroduction to Quantitative Techniques
Introduction to Quantitative Techniques
 
Measures of Dispersion
Measures of DispersionMeasures of Dispersion
Measures of Dispersion
 
Probability Distributions
Probability DistributionsProbability Distributions
Probability Distributions
 
Probability - I
Probability - IProbability - I
Probability - I
 
Central Tendency & Dispersion
Central Tendency & DispersionCentral Tendency & Dispersion
Central Tendency & Dispersion
 
Matrices & Determinants
Matrices & DeterminantsMatrices & Determinants
Matrices & Determinants
 
Set Theory
Set TheorySet Theory
Set Theory
 
Time Series - 1
Time Series - 1Time Series - 1
Time Series - 1
 
Logarithms
LogarithmsLogarithms
Logarithms
 

Recently uploaded

USPS® Forced Meter Migration - How to Know if Your Postage Meter Will Soon be...
USPS® Forced Meter Migration - How to Know if Your Postage Meter Will Soon be...USPS® Forced Meter Migration - How to Know if Your Postage Meter Will Soon be...
USPS® Forced Meter Migration - How to Know if Your Postage Meter Will Soon be...Postal Advocate Inc.
 
THEORIES OF ORGANIZATION-PUBLIC ADMINISTRATION
THEORIES OF ORGANIZATION-PUBLIC ADMINISTRATIONTHEORIES OF ORGANIZATION-PUBLIC ADMINISTRATION
THEORIES OF ORGANIZATION-PUBLIC ADMINISTRATIONHumphrey A Beña
 
Barangay Council for the Protection of Children (BCPC) Orientation.pptx
Barangay Council for the Protection of Children (BCPC) Orientation.pptxBarangay Council for the Protection of Children (BCPC) Orientation.pptx
Barangay Council for the Protection of Children (BCPC) Orientation.pptxCarlos105
 
Q4-PPT-Music9_Lesson-1-Romantic-Opera.pptx
Q4-PPT-Music9_Lesson-1-Romantic-Opera.pptxQ4-PPT-Music9_Lesson-1-Romantic-Opera.pptx
Q4-PPT-Music9_Lesson-1-Romantic-Opera.pptxlancelewisportillo
 
MULTIDISCIPLINRY NATURE OF THE ENVIRONMENTAL STUDIES.pptx
MULTIDISCIPLINRY NATURE OF THE ENVIRONMENTAL STUDIES.pptxMULTIDISCIPLINRY NATURE OF THE ENVIRONMENTAL STUDIES.pptx
MULTIDISCIPLINRY NATURE OF THE ENVIRONMENTAL STUDIES.pptxAnupkumar Sharma
 
Inclusivity Essentials_ Creating Accessible Websites for Nonprofits .pdf
Inclusivity Essentials_ Creating Accessible Websites for Nonprofits .pdfInclusivity Essentials_ Creating Accessible Websites for Nonprofits .pdf
Inclusivity Essentials_ Creating Accessible Websites for Nonprofits .pdfTechSoup
 
Influencing policy (training slides from Fast Track Impact)
Influencing policy (training slides from Fast Track Impact)Influencing policy (training slides from Fast Track Impact)
Influencing policy (training slides from Fast Track Impact)Mark Reed
 
HỌC TỐT TIẾNG ANH 11 THEO CHƯƠNG TRÌNH GLOBAL SUCCESS ĐÁP ÁN CHI TIẾT - CẢ NĂ...
HỌC TỐT TIẾNG ANH 11 THEO CHƯƠNG TRÌNH GLOBAL SUCCESS ĐÁP ÁN CHI TIẾT - CẢ NĂ...HỌC TỐT TIẾNG ANH 11 THEO CHƯƠNG TRÌNH GLOBAL SUCCESS ĐÁP ÁN CHI TIẾT - CẢ NĂ...
HỌC TỐT TIẾNG ANH 11 THEO CHƯƠNG TRÌNH GLOBAL SUCCESS ĐÁP ÁN CHI TIẾT - CẢ NĂ...Nguyen Thanh Tu Collection
 
Transaction Management in Database Management System
Transaction Management in Database Management SystemTransaction Management in Database Management System
Transaction Management in Database Management SystemChristalin Nelson
 
AUDIENCE THEORY -CULTIVATION THEORY - GERBNER.pptx
AUDIENCE THEORY -CULTIVATION THEORY -  GERBNER.pptxAUDIENCE THEORY -CULTIVATION THEORY -  GERBNER.pptx
AUDIENCE THEORY -CULTIVATION THEORY - GERBNER.pptxiammrhaywood
 
ICS2208 Lecture6 Notes for SL spaces.pdf
ICS2208 Lecture6 Notes for SL spaces.pdfICS2208 Lecture6 Notes for SL spaces.pdf
ICS2208 Lecture6 Notes for SL spaces.pdfVanessa Camilleri
 
Global Lehigh Strategic Initiatives (without descriptions)
Global Lehigh Strategic Initiatives (without descriptions)Global Lehigh Strategic Initiatives (without descriptions)
Global Lehigh Strategic Initiatives (without descriptions)cama23
 
How to Add Barcode on PDF Report in Odoo 17
How to Add Barcode on PDF Report in Odoo 17How to Add Barcode on PDF Report in Odoo 17
How to Add Barcode on PDF Report in Odoo 17Celine George
 
Visit to a blind student's school🧑‍🦯🧑‍🦯(community medicine)
Visit to a blind student's school🧑‍🦯🧑‍🦯(community medicine)Visit to a blind student's school🧑‍🦯🧑‍🦯(community medicine)
Visit to a blind student's school🧑‍🦯🧑‍🦯(community medicine)lakshayb543
 
Daily Lesson Plan in Mathematics Quarter 4
Daily Lesson Plan in Mathematics Quarter 4Daily Lesson Plan in Mathematics Quarter 4
Daily Lesson Plan in Mathematics Quarter 4JOYLYNSAMANIEGO
 
Food processing presentation for bsc agriculture hons
Food processing presentation for bsc agriculture honsFood processing presentation for bsc agriculture hons
Food processing presentation for bsc agriculture honsManeerUddin
 
Integumentary System SMP B. Pharm Sem I.ppt
Integumentary System SMP B. Pharm Sem I.pptIntegumentary System SMP B. Pharm Sem I.ppt
Integumentary System SMP B. Pharm Sem I.pptshraddhaparab530
 

Recently uploaded (20)

USPS® Forced Meter Migration - How to Know if Your Postage Meter Will Soon be...
USPS® Forced Meter Migration - How to Know if Your Postage Meter Will Soon be...USPS® Forced Meter Migration - How to Know if Your Postage Meter Will Soon be...
USPS® Forced Meter Migration - How to Know if Your Postage Meter Will Soon be...
 
THEORIES OF ORGANIZATION-PUBLIC ADMINISTRATION
THEORIES OF ORGANIZATION-PUBLIC ADMINISTRATIONTHEORIES OF ORGANIZATION-PUBLIC ADMINISTRATION
THEORIES OF ORGANIZATION-PUBLIC ADMINISTRATION
 
Barangay Council for the Protection of Children (BCPC) Orientation.pptx
Barangay Council for the Protection of Children (BCPC) Orientation.pptxBarangay Council for the Protection of Children (BCPC) Orientation.pptx
Barangay Council for the Protection of Children (BCPC) Orientation.pptx
 
Q4-PPT-Music9_Lesson-1-Romantic-Opera.pptx
Q4-PPT-Music9_Lesson-1-Romantic-Opera.pptxQ4-PPT-Music9_Lesson-1-Romantic-Opera.pptx
Q4-PPT-Music9_Lesson-1-Romantic-Opera.pptx
 
MULTIDISCIPLINRY NATURE OF THE ENVIRONMENTAL STUDIES.pptx
MULTIDISCIPLINRY NATURE OF THE ENVIRONMENTAL STUDIES.pptxMULTIDISCIPLINRY NATURE OF THE ENVIRONMENTAL STUDIES.pptx
MULTIDISCIPLINRY NATURE OF THE ENVIRONMENTAL STUDIES.pptx
 
YOUVE_GOT_EMAIL_PRELIMS_EL_DORADO_2024.pptx
YOUVE_GOT_EMAIL_PRELIMS_EL_DORADO_2024.pptxYOUVE_GOT_EMAIL_PRELIMS_EL_DORADO_2024.pptx
YOUVE_GOT_EMAIL_PRELIMS_EL_DORADO_2024.pptx
 
Inclusivity Essentials_ Creating Accessible Websites for Nonprofits .pdf
Inclusivity Essentials_ Creating Accessible Websites for Nonprofits .pdfInclusivity Essentials_ Creating Accessible Websites for Nonprofits .pdf
Inclusivity Essentials_ Creating Accessible Websites for Nonprofits .pdf
 
Influencing policy (training slides from Fast Track Impact)
Influencing policy (training slides from Fast Track Impact)Influencing policy (training slides from Fast Track Impact)
Influencing policy (training slides from Fast Track Impact)
 
YOUVE GOT EMAIL_FINALS_EL_DORADO_2024.pptx
YOUVE GOT EMAIL_FINALS_EL_DORADO_2024.pptxYOUVE GOT EMAIL_FINALS_EL_DORADO_2024.pptx
YOUVE GOT EMAIL_FINALS_EL_DORADO_2024.pptx
 
HỌC TỐT TIẾNG ANH 11 THEO CHƯƠNG TRÌNH GLOBAL SUCCESS ĐÁP ÁN CHI TIẾT - CẢ NĂ...
HỌC TỐT TIẾNG ANH 11 THEO CHƯƠNG TRÌNH GLOBAL SUCCESS ĐÁP ÁN CHI TIẾT - CẢ NĂ...HỌC TỐT TIẾNG ANH 11 THEO CHƯƠNG TRÌNH GLOBAL SUCCESS ĐÁP ÁN CHI TIẾT - CẢ NĂ...
HỌC TỐT TIẾNG ANH 11 THEO CHƯƠNG TRÌNH GLOBAL SUCCESS ĐÁP ÁN CHI TIẾT - CẢ NĂ...
 
Transaction Management in Database Management System
Transaction Management in Database Management SystemTransaction Management in Database Management System
Transaction Management in Database Management System
 
AUDIENCE THEORY -CULTIVATION THEORY - GERBNER.pptx
AUDIENCE THEORY -CULTIVATION THEORY -  GERBNER.pptxAUDIENCE THEORY -CULTIVATION THEORY -  GERBNER.pptx
AUDIENCE THEORY -CULTIVATION THEORY - GERBNER.pptx
 
Raw materials used in Herbal Cosmetics.pptx
Raw materials used in Herbal Cosmetics.pptxRaw materials used in Herbal Cosmetics.pptx
Raw materials used in Herbal Cosmetics.pptx
 
ICS2208 Lecture6 Notes for SL spaces.pdf
ICS2208 Lecture6 Notes for SL spaces.pdfICS2208 Lecture6 Notes for SL spaces.pdf
ICS2208 Lecture6 Notes for SL spaces.pdf
 
Global Lehigh Strategic Initiatives (without descriptions)
Global Lehigh Strategic Initiatives (without descriptions)Global Lehigh Strategic Initiatives (without descriptions)
Global Lehigh Strategic Initiatives (without descriptions)
 
How to Add Barcode on PDF Report in Odoo 17
How to Add Barcode on PDF Report in Odoo 17How to Add Barcode on PDF Report in Odoo 17
How to Add Barcode on PDF Report in Odoo 17
 
Visit to a blind student's school🧑‍🦯🧑‍🦯(community medicine)
Visit to a blind student's school🧑‍🦯🧑‍🦯(community medicine)Visit to a blind student's school🧑‍🦯🧑‍🦯(community medicine)
Visit to a blind student's school🧑‍🦯🧑‍🦯(community medicine)
 
Daily Lesson Plan in Mathematics Quarter 4
Daily Lesson Plan in Mathematics Quarter 4Daily Lesson Plan in Mathematics Quarter 4
Daily Lesson Plan in Mathematics Quarter 4
 
Food processing presentation for bsc agriculture hons
Food processing presentation for bsc agriculture honsFood processing presentation for bsc agriculture hons
Food processing presentation for bsc agriculture hons
 
Integumentary System SMP B. Pharm Sem I.ppt
Integumentary System SMP B. Pharm Sem I.pptIntegumentary System SMP B. Pharm Sem I.ppt
Integumentary System SMP B. Pharm Sem I.ppt
 

Chi Square & Anova

  • 1. CHI SQUARE & ANOVA
  • 2. DIFFERENCE BETWEEN CHI SQUARE & ANOVA BirinderSingh,AssistantProfessor,PCTE Ludhiana 2  It enables us to test whether more than two population proportions can be considered equal  Analysis of Variance (Anova) enables us to test whether more than two population means can be considered equal. Chi Square (χ2 Test) Anova (F Test)
  • 3. CHARACTERISTICS OF CHI SQUARE  Every Chi square distribution extends indefinitely to right from zero.  It is skewed to right  As df increases, Chi square curve become more bell shaped and approaches normal distribution.  Its mean is degree of freedom  Its variance is twice degree of freedom 3 BirinderSingh,AssistantProfessor,PCTE Ludhiana
  • 4. CHI SQUARE (Χ2 TEST)  Chi Square Test deals with analysis of categorical data in terms of frequencies / proportions / percentages.  It is primarily of three types:  Test of Homogeneity: To determine whether different population are similar w.r.t some characteristics.  Test of Independence: Tests whether the characteristics of the elements of the same population are related or independent.  Test of Goodness of Fit: To determine whether there is a significant difference between an observed frequency distribution and theoretical probability distribution. 4 BirinderSingh,AssistantProfessor,PCTE Ludhiana
  • 5. COMPUTATIONAL PROCEDURE – CHI SQUARE TEST  Formulate Null & Alternative Hypothesis  State type of test  Select LOS  Compute expected frequencies assuming H0 to be true.  Compute χ2 calculated value using  𝜒2 cal = (𝑓𝑜 −𝑓𝑒)2 𝑓𝑒  Extract 𝜒2 crit value from table  Compare 𝜒2 cal & 𝜒2 crit and make decision. 5 BirinderSingh,AssistantProfessor,PCTE Ludhiana
  • 6. CHI SQUARE – TEST OF HOMOGENEITY  Based on a study, it is expected that 50% of the students opt for marketing, 30% for finance and 20% for HR. In a sample for 100, it was observed that 61, 24 and 15 opt for these subjects respectively. Do you agree with study findings at 10% LOS? (𝜒2 cal = 4.87) (𝜒2 crit = 4.605) (Rejected) 6 BirinderSingh,AssistantProfessor,PCTE Ludhiana
  • 7. CHI SQUARE – TEST OF HOMOGENEITY  A shoe seller has received the consignment of the order that he had placed for 10000 pair of different sizes. Without physically segregating the sizes and counting no. of pair of shoes of each size, he wants to ascertain that consignment received is as per order . Check at 5% LOS. (𝜒2 cal = 6.87) (𝜒2 crit = 12.592) (Accepted) 7 BirinderSingh,AssistantProfessor,PCTE Ludhiana Size 4 5 6 7 8 9 10 Order qty 500 1500 2000 2000 2000 1500 500 Rec. qty 700 1800 2200 2000 2000 1300 0
  • 8. CHI SQUARE – TEST OF INDEPENDENCE FORMULAE TO BE USED  Computation of expected frequency  Fe = (RT x CT) / GT where RT = Row Total CT = Column Total GT = Grand Total  Computation of degree of freedom  Df = (r – 1) (c – 1) 8 BirinderSingh,AssistantProfessor,PCTE Ludhiana
  • 9. CHI SQUARE – TEST OF INDEPENDENCE  Following data was collected when a survey was carried out on preference for formal wear in work place: Is there difference in preference due to sex? Check at 20% LOS. (𝜒2 cal = 0.2522) (𝜒2 crit = 1.642) (Accepted) 9 BirinderSingh,AssistantProfessor,PCTE Ludhiana Gents Ladies Yes 520 60 No 80 11
  • 10. CHI SQUARE – TEST OF INDEPENDENCE  Sample data in respect of viewership of a TV Program for various age groups was collected and is as follows: Is viewership of program independent of age ? Check at 5% LOS. (𝜒2 cal = 26.01) (𝜒2 crit = 9.488) (Rejected) 10 BirinderSingh,AssistantProfessor,PCTE Ludhiana 15-25 26-40 41-50 Always 75 180 105 Sometimes 50 60 40 Never 25 20 5
  • 11. CHI SQUARE – TEST OF GOODNESS OF FIT  Gordon Company requires that college seniors who are seeking positions will be interviewed. For staffing purposes, the director of recruitment thinks that the interview process can be approximated by a binomial distribution with p = 0.40 i.e. Can he conclude that BD at p = 0.4 provides a good description of observed frequencies. Check at 20% LOS. (𝜒2 cal = 5.041) (𝜒2 crit = 4.642) (Rejected) 11 BirinderSingh,AssistantProfessor,PCTE Ludhiana
  • 12. ANALYSIS OF VARIANCE (ANOVA)  It enables us to test for the significance of the differences among more than two sample means.  Using Anova, we will be able to make inferences about whether our samples are drawn from population having the same mean.  Examples:  Comparing the mileage of five different brands of cars  Testing which of the four different training methods produces the fastest learning record  Comparing the average salary of three different companies  In each of these cases, we would compare the means of more than two sample means.  F-Distribution is used to analyze certain situations 12 BirinderSingh,AssistantProfessor,PCTE Ludhiana
  • 13. ASSUMPTIONS  Populations are normally distributed  Samples are random and independent  Population Variances are equal. 13 BirinderSingh,AssistantProfessor,PCTE Ludhiana
  • 14. COMPUTATIONAL PROCEDURE IN ANOVA (ONE WAY)  Define Null & Alternative Hypothesis  Select estimator & determine its distribution  Select Significance Level  Calculate Sum of all observations: T = Ʃxi  Calculate correction factor: CF = T2 / nT where nT = sample size  Calculate Sum of squares total, SST = Σ(Σ𝑥𝑖 2) − CF  Calculate Sum of squares between columns, SSB = Σ((Σ𝑥𝑖)2 /𝑛𝑖) − CF  Calculate Sum of squares within columns, SSW = SST – SSB  Calculate Mean of squares between groups, MSB = SSB / (k – 1) where k = no. of samples  Calculate Mean of squares within groups, MSW = SSW / (nT – k)  Calculate Fcal = MSB / MSW  Calculate Fcrit = F(dfnum, dfden, α) where dfnum = k – 1, dfden = nT – k  Compare Fcal & Fcrit and make your statistical & managerial decisions 14 BirinderSingh,AssistantProfessor,PCTE Ludhiana
  • 15. PRACTICE PROBLEM – ONE WAY ANOVA  Three group of students are taught a statistical technique by three different methods. When tested on one problem, sample scores of 3 students selected at random from each of the group as under: At 0.05 LOS, do the means of populations taught by three methods differ? (Fcal = 1.5, Fcrit = 5.14) (Accepted) 15 BirinderSingh,AssistantProfessor,PCTE Ludhiana Group 1 Group 2 Group 3 3 5 3 4 7 7 5 6 5
  • 17. PRACTICE PROBLEM – ONE WAY ANOVA  IAA wanted to find out if average sale of small cars namely Swift, Jazz & Figo is same in Tier II cities. It obtained quarterly sales data from 5 such cities A,B,C,D,E as shown. What conclusion can be drawn at 0.05 LOS? (Fcal = 1.5, Fcrit = 5.14) (Accepted) 17 BirinderSingh,AssistantProfessor,PCTE Ludhiana City Swift Jazz Figo A 32 26 30 B 28 34 - C 25 - 28 D 34 33 32 E 31 31 26
  • 18. COMPUTATIONAL PROCEDURE IN ANOVA (TWO WAY)  Define Null & Alternative Hypothesis  Select estimator & determine its distribution  Select Significance Level  Calculate Sum of all observations: T = Ʃxi  Calculate correction factor: CF = T2 / nT where nT = sample size  Calculate Sum of squares columns, SSC = Σ((Σ𝑥𝑗)2 /𝑛𝑖) − CF  Calculate Sum of squares rows, SSR = Σ((Σ𝑥𝑖)2/𝑛𝑗) − CF  Calculate Sum of squares total, SST = Σ(Σ𝑥𝑖 2 ) − CF  Calculate Sum of square error, SSE = SST – (SSC + SSR)  Calculate Mean of squares column, MSC = SSC / (c – 1)  Calculate Mean of squares rows, MSR = SSR / (r – 1)  Calculate Mean of squares error, MSE = SSE / (c – 1) (r – 1)  Calculate Fcal = MSC/MSE & MSR/MSE  Calculate Fcrit = F(dfnum, dfden, α) where dfnum = c-1 or r-1, dfden = (c-1)(r-1)  Compare Fcal & Fcrit and make your statistical & managerial decisions 18 BirinderSingh,AssistantProfessor,PCTE Ludhiana
  • 19. PRACTICE PROBLEM – TWO WAY ANOVA  Three salesmen Kallu, Lallu & Mallu were assigned three cities A,B & C. The data on sales for quarter ending June 2017 achieved by them is: Is there any significant difference in sales made by 3 of them? Is there any significant difference in sales made in 3 cities? Check at 0.05 LOS? (F1cal = 9.23, F1crit = 6.94) (F2cal = 3.25, F2crit = 6.94) (Rejected) & (Accepted)  19 BirinderSingh,AssistantProfessor,PCTE Ludhiana City Kallu Mallu Lallu A 4 3 4 B 3 2 5 C 5 3 6
  • 20. DECISION FLOW DIAGRAM - ESTIMATION 20 BirinderSingh,AssistantProfessor,PCTE Ludhiana Start Is n≥30 Is pop. Known to be normally distributed Use ‘Z’ table Stop Use a Statistician Is SD known ? Use ‘Z’ table Stop Use ‘t’ table Stop