Kruskal-Wallis H TestThe Kruskal-Wallis H Test is a nonparametric procedure that can be used to compare more than two populations in a completely randomized.

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Kruskal-Wallis H TestThe Kruskal-Wallis H Test is a nonparametric procedure that can be used to compare more than two populations in a completely randomized design. All n = n 1 +n 2 +…+n k measurements are jointly ranked. We use the sums of the ranks of the k samples to compare the distributions. The Kruskal-Wallis H Test

H 0 : the k distributions are identical versus H a : at least one distribution is different Test statistic: Kruskal-Wallis H When H 0 is true, the test statistic H has an approximate chi-square distribution with df = k-1. Use a right-tailed rejection region or p- value based on the Chi-square distribution. H 0 : the k distributions are identical versus H a : at least one distribution is different Test statistic: Kruskal-Wallis H When H 0 is true, the test statistic H has an approximate chi-square distribution with df = k-1. Use a right-tailed rejection region or p- value based on the Chi-square distribution. The Kruskal-Wallis H Test

Rank the total measurements in all k samples from 1 to n. Tied observations are assigned the average of the ranks they would have gotten if not tied. Calculate  T i = rank sum for the ith sample i = 1, 2,…,k And the test statistic Rank the total measurements in all k samples from 1 to n. Tied observations are assigned the average of the ranks they would have gotten if not tied. Calculate  T i = rank sum for the ith sample i = 1, 2,…,k And the test statistic The Kruskal-Wallis H Test

Example Four groups of students were randomly assigned to be taught with four different techniques, and their achievement test scores were recorded. Are the distributions of test scores the same or do they differ by location?

Teaching Methods H 0 : the distributions of scores are the same H a : the distributions differ by location H 0 : the distributions of scores are the same H a : the distributions differ by location (3)(7)(1)(16) (13)(5)(8)(15) (6)(12)(4)(10) (9)(11)(2)(14) TiTi Rank the 16 measurements from 1 to 16, and calculate the four rank sums.

Teaching Methods H 0 : the distributions of scores are the same H a : the distributions differ by location H 0 : the distributions of scores are the same H a : the distributions differ by location Rejection region: Use Table 5. For a right-tailed chi-square test with  =.05 and df = 4-1 =3, reject H 0 if H  Reject H 0. There is sufficient evidence to indicate that there is a difference in test scores for the four teaching techniques.

Summary The Kruskal-Wallis H test is the rank equivalent of the one- way analysis of variance F test.

Key Concepts Nonparametric Methods These methods can be used when 1.the data cannot be measured on a quantitative scale, or when 2.the numerical scale of measurement is arbitrarily set by the researcher, or when 3.the parametric assumptions such as normality or constant variance are seriously violated.

Key Concepts Kruskal-Wallis H Test: Completely Randomized Design 1.Jointly rank the n observations in the k samples. Calculate the rank sums, T i  rank sum of sample i, and the test statistic 2.If the null hypothesis of equality of distributions is false, H will be unusually large, resulting in a one- tailed test. 3.For sample sizes of five or greater, the rejection region for H is based on the chi-square distribution with (k  1) degrees of freedom.