On hypothesis testing with a partitioned random alternative

被引:0
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作者
WeiZhen Wang
机构
[1] Wright State University,Department of Mathematics and Statistics
来源
Science China Mathematics | 2010年 / 53卷
关键词
analysis of variance; conditional probability; multiple linear regression; one-sample problem; 62F03; 62A01;
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摘要
It is common in statistical practice that one needs to make a choice among m + 1 mutually exclusive claims on distributions. When m = 1, it is done by the (traditional) hypothesis test. In this paper, a generalization to the case m > 1 is proposed. The fundamental difference with the case m = 1 is that the new alternative hypothesis is a partition of m multiple claims and is data-dependent. Data is used to decide which claim in the partition is to be tested as the alternative. Thus, a random alternative is involved. The conditional and overall type I errors of the proposed test are controlled at a given level, and this test can be used as a new solution for the general multiple test problem. Several classical problems, including the one-sample problem, model selection in multiple linear regression, and multi-factor analysis, are revisited, and new tests are provided correspondingly. Consequently, the famous two-sided t-test should be replaced by the proposed.
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页码:927 / 938
页数:11
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