Bartlett's test
In statistics, Bartlett's test (see Snedecor and Cochran, 1989) is used to test if k samples are from populations with equal variances. Equal variances across populations is called homoscedasticity or homogeneity of variances. Some statistical tests, for example the analysis of variance, assume that variances are equal across groups or samples. The Bartlett test can be used to verify that assumption.
In Bartlett test, we construct the null and alternative hypothesis. For this purpose several test procedures have been devised. The test procedure due to M.S.E (Mean Square Error/Estimator) Bartlett test is represented here. This test procedure is based on the statistic whose sampling distribution is approximately a Chi-Square distribution with (k-1) degrees of freedom, where k is the number of random samples, which may vary in size and are each drawn from independent normal distributions. Bartlett's test is sensitive to departures from normality. That is, if the samples come from non-normal distributions, then Bartlett's test may simply be testing for non-normality. Levene's test and the Brown–Forsythe test are alternatives to the Bartlett test that are less sensitive to departures from normality.[1]
The test is named after Maurice Stevenson Bartlett.
Specification
Bartlett's test is used to test the null hypothesis, H0 that all k population variances are equal against the alternative that at least two are different.
If there are k samples with sizes and sample variances then Bartlett's test statistic is
where and is the pooled estimate for the variance.
The test statistic has approximately a distribution. Thus the null hypothesis is rejected if (where is the upper tail critical value for the distribution).
Bartlett's test is a modification of the corresponding likelihood ratio test designed to make the approximation to the distribution better (Bartlett, 1937).
See also
References
- NIST/SEMATECH e-Handbook of Statistical Methods. Available online, URL: http://www.itl.nist.gov/div898/handbook/eda/section3/eda357.htm Archived 2020-05-04 at the Wayback Machine. Retrieved December 31, 2013.
- F., Gunst, Richard; L., Hess, James (2003-01-01). Statistical design and analysis of experiments : with applications to engineering and science. Wiley. p. 98. ISBN 0471372161. OCLC 856653529.