A two-sample empirical likelihood ratio test based on samples entropy

被引:0
作者
Gregory Gurevich
Albert Vexler
机构
[1] SCE—Shamoon College of Engineering,The Department of Industrial Engineering and Management
[2] New York State University at Buffalo,Department of Biostatistics
来源
Statistics and Computing | 2011年 / 21卷
关键词
Empirical likelihood; Entropy; Likelihood ratio; Two-sample nonparametric tests;
D O I
暂无
中图分类号
学科分类号
摘要
Powerful entropy-based tests for normality, uniformity and exponentiality have been well addressed in the statistical literature. The density-based empirical likelihood approach improves the performance of these tests for goodness-of-fit, forming them into approximate likelihood ratios. This method is extended to develop two-sample empirical likelihood approximations to optimal parametric likelihood ratios, resulting in an efficient test based on samples entropy. The proposed and examined distribution-free two-sample test is shown to be very competitive with well-known nonparametric tests. For example, the new test has high and stable power detecting a nonconstant shift in the two-sample problem, when Wilcoxon’s test may break down completely. This is partly due to the inherent structure developed within Neyman-Pearson type lemmas. The outputs of an extensive Monte Carlo analysis and real data example support our theoretical results. The Monte Carlo simulation study indicates that the proposed test compares favorably with the standard procedures, for a wide range of null and alternative distributions.
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页码:657 / 670
页数:13
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