Chi-Square Test Dr Kishor Bhanushali. Chi-Square Test Chi-square, symbolically written as χ2 (Pronounced as Ki-square), is a statistical measure used.

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Presentation transcript:

Chi-Square Test Dr Kishor Bhanushali

Chi-Square Test Chi-square, symbolically written as χ2 (Pronounced as Ki-square), is a statistical measure used in the context of sampling analysis for comparing a variance to a theoretical variance. It can be used to determine if categorical data shows dependency or the two classifications are independent. The test is, in fact, a technique through the use of which it is possible for all researchers to (i) test the goodness of fit; (ii) test the significance of association between two attributes, and (iii) test the homogeneity or the significance of population variance

CHI-SQUARE AS A NON-PARAMETRIC TEST Chi-square is an important non-parametric test and as such no rigid assumptions are necessary in respect of the type of population We require only the degrees of freedom (implicitly of course the size of the sample) for using this test As a non-parametric test, chi-square can be used (i) as a test of goodness of fit and (ii) as a test of independence

As A Test Of Goodness Of Fit How well does the assumed theoretical distribution (such as Binomial distribution, Poisson distribution or Normal distribution) fit to the observed data. When some theoretical distribution is fitted to the given data, we are always interested in knowing as to how well this distribution fits with the observed data If the calculated value of χ2 is less than the table value at a certain level of significance, the fit is considered to be a good one which means that the divergence between the observed and expected frequencies is attributable to fluctuations of sampling. But if the calculated value of χ2 is greater than its table value, the fit is not considered to be a good one.

As A Test Of Independence Test enables us to explain whether or not two attributes are associated If the calculated value of χ2 is less than the table value at a certain level of significance for given degrees of freedom, we conclude that null hypothesis stands which means that the two attributes are independent or not associated But if the calculated value of χ2 is greater than its table value, our inference then would be that null hypothesis does not hold good which means the two attributes are associated and the association is not because of some chance factor but it exists in reality

Conditions For The Application Of Χ2 Test (i) Observations recorded and used are collected on a random basis. (ii) All the itmes in the sample must be independent. (iii) No group should contain very few items, say less than 10. In case where the frequencies are less than 10, regrouping is done by combining the frequencies of adjoining groups so that the new frequencies become greater than 10. Some statisticians take this number as 5, but 10 is regarded as better by most of the statisticians. (iv) The overall number of items must also be reasonably large. It should normally be at least 50, howsoever small the number of groups may be.

Example

Solution The table value of χ2 for 5 degrees of freedom at 5 per cent level of significance is Comparing calculated and table values of χ2, we find that calculated value is less than the table value and as such could have arisen due to fluctuations of sampling. The result, thus, supports the hypothesis and it can be concluded that the die is unbiased.