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Hypothesis Testing in Multivariate Linear Models with Randomly Missing Data
Authors:H J Keselman  Rand R Wilcox  Jason Taylor  Rhonda K Kowalchuk
Institution:1. University of Manitoba , R3T 2N2, Winnipeg, Manitoba, Canada;2. University of Southern California , 90089–1061, Los Angeles, California
Abstract:Tests for mean equality proposed by Weerahandi (1995) and Chen and Chen (1998), tests that do not require equality of population variances, were examined when data were not only heterogeneous but, as well, nonnormal in unbalanced completely randomized designs. Furthermore, these tests were compared to a test examined by Lix and Keselman (1998), a test that uses a heteroscedastic statistic (i.e., Welch, 1951) with robust estimators (20% trimmed means and Winsorized variances). Our findings confirmed previously published data that the tests are indeed robust to variance heterogeneity when the data are obtained from normal populations. However, the Weerahandi (1995) and Chen and Chen (1998) tests were not found to be robust when data were obtained from nonnormal populations. Indeed, rates of Type I error were typically in excess of 10% and, at times, exceeded 50%. On the other hand, the statistic presented by Lix and Keselman (1998) was generally robust to variance heterogeneity and nonnormality.
Keywords:Tests for Mean Equality  Variance Heterogeneity  Nonnormality  Monte Carlo  Robust Estimators
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