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DEPARTMENT OF PHYSICAL EDUCATION & SPORTS SCIENCES
UNIVERSITY OF DELHI
TOPIC: CHI SQUARE (A NON- PARAMETRIC TECHNIQUE)
Presented by : Punam Pradhan
PhD Scholar
Roll no.: 1480
An Overview
• Non-parametric test
• Criteria for Test selection
• Introduction to Chi-square
• Assumptions of Chi-Square Test
• Application of Chi-square Test
• Goodness of fit with SPSS
• Computation of Goodness of Fit
• Interpretation of findings
NON-PARAMETRIC TEST
• Used when the distribution of the data is not normal ,
population parameters are unknown & data are qualitative
in nature and,
• Data being measured on nominal or ordinal scales.
Criteria for Test selection
Chi-square is a
statistical test used to
test the significance of
the difference between
the distribution of
observed and theoretical
frequencies.
• The chi-square is denoted by the Greek letter x².
• Used when the data is nominal (categorical).
• Chi-square statistic is computed based on frequencies.
• Chi-square(x²) is computed by the following formula:
where, : observed frequency
: expected frequency
𝑓0
𝑓𝑒
Assumptions of Chi-Square Test
Samples should be randomly drawn from the population.
All the observations should be independent of each other.
The data should be in terms of frequency.
Observed frequencies should not be too small and the sample size,
n, must be sufficiently large.
Application of Chi-square Test
Testing the equal occurrence hypothesis.
Testing the significance of association between two attributes.
Testing the goodness of fit
Goodness of fit with SPSS
Consider a study in which response of 110 students were taken to compare
the popularity of three different brands of tracksuits among them.
Solution: Here, the hypotheses that are required to be tested are as follows:
Ho : All three brands are equally popular.
H1 : All three brands are not equally popular.
Summary of Student’s Response About Their Preferences
Brand A Brand B Brand C
50 20 40
Computation of Goodness of Fit
• Click on Variable View to define variables and their properties.
• Under the column heading ‘Name’ write name of the variable .i.e. Brand.
• Under the column heading ‘Label’ define full name of variable, .i.e. Brand of Track Suit
• Under the column heading ‘Values’ define ‘1’ for Brand A, ‘2’ for Brand B, and ‘3’ for Brand C.
• Under the column heading ‘Measure’ select the ‘Nominal’ option because Brand is a nominal variable.
• Define another variable Frequency in the next row as scale variable.
• Click on Data command, click on Weight Cases option
• Select the option weight cases by
• Select variable .i.e. Frequency from the left panel and bring it
into “Frequency Variable” section in the right panel.
• Click on OK and go back to the data file.
Frequency
Analyze → Nonparametric Tests → Chi‐Square ( you will be taken to next
screen) → select Brand variable from left panel and bring it to the ‘Test
variable list’ section in the right panel → click on option → click ‘Descriptive’
option → click continue → click OK to get the output.
Brand of tracksuit
*The minimum expected cell frequency is 36.7
Interpretation of findings
• The value of χ2 is 12.727 which is significant at 5% level, as the p
value is 0.002 which is less than 0.05. Thus, we may reject the null
hypothesis.
• It can be interpreted that all the three responses are not equally
distributed and the fit is not good.
References
• Statistics for Psychology Book, by J.P. Verma
• Research Methodology (Methods and Techniques) Book, by C.R. Kothari
 CHI SQUARE- A NON PARAMETRIC TECHNIQUE

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CHI SQUARE- A NON PARAMETRIC TECHNIQUE

  • 1. DEPARTMENT OF PHYSICAL EDUCATION & SPORTS SCIENCES UNIVERSITY OF DELHI TOPIC: CHI SQUARE (A NON- PARAMETRIC TECHNIQUE) Presented by : Punam Pradhan PhD Scholar Roll no.: 1480
  • 2. An Overview • Non-parametric test • Criteria for Test selection • Introduction to Chi-square • Assumptions of Chi-Square Test • Application of Chi-square Test • Goodness of fit with SPSS • Computation of Goodness of Fit • Interpretation of findings
  • 3. NON-PARAMETRIC TEST • Used when the distribution of the data is not normal , population parameters are unknown & data are qualitative in nature and, • Data being measured on nominal or ordinal scales.
  • 4. Criteria for Test selection
  • 5. Chi-square is a statistical test used to test the significance of the difference between the distribution of observed and theoretical frequencies.
  • 6. • The chi-square is denoted by the Greek letter x². • Used when the data is nominal (categorical). • Chi-square statistic is computed based on frequencies. • Chi-square(x²) is computed by the following formula: where, : observed frequency : expected frequency 𝑓0 𝑓𝑒
  • 7. Assumptions of Chi-Square Test Samples should be randomly drawn from the population. All the observations should be independent of each other. The data should be in terms of frequency. Observed frequencies should not be too small and the sample size, n, must be sufficiently large.
  • 8. Application of Chi-square Test Testing the equal occurrence hypothesis. Testing the significance of association between two attributes. Testing the goodness of fit
  • 9. Goodness of fit with SPSS Consider a study in which response of 110 students were taken to compare the popularity of three different brands of tracksuits among them. Solution: Here, the hypotheses that are required to be tested are as follows: Ho : All three brands are equally popular. H1 : All three brands are not equally popular. Summary of Student’s Response About Their Preferences Brand A Brand B Brand C 50 20 40
  • 10. Computation of Goodness of Fit • Click on Variable View to define variables and their properties. • Under the column heading ‘Name’ write name of the variable .i.e. Brand. • Under the column heading ‘Label’ define full name of variable, .i.e. Brand of Track Suit • Under the column heading ‘Values’ define ‘1’ for Brand A, ‘2’ for Brand B, and ‘3’ for Brand C. • Under the column heading ‘Measure’ select the ‘Nominal’ option because Brand is a nominal variable. • Define another variable Frequency in the next row as scale variable.
  • 11. • Click on Data command, click on Weight Cases option • Select the option weight cases by • Select variable .i.e. Frequency from the left panel and bring it into “Frequency Variable” section in the right panel. • Click on OK and go back to the data file. Frequency
  • 12. Analyze → Nonparametric Tests → Chi‐Square ( you will be taken to next screen) → select Brand variable from left panel and bring it to the ‘Test variable list’ section in the right panel → click on option → click ‘Descriptive’ option → click continue → click OK to get the output. Brand of tracksuit
  • 13. *The minimum expected cell frequency is 36.7
  • 14. Interpretation of findings • The value of χ2 is 12.727 which is significant at 5% level, as the p value is 0.002 which is less than 0.05. Thus, we may reject the null hypothesis. • It can be interpreted that all the three responses are not equally distributed and the fit is not good.
  • 15. References • Statistics for Psychology Book, by J.P. Verma • Research Methodology (Methods and Techniques) Book, by C.R. Kothari