Power in High-Dimensional Testing Problems

被引:12
|
作者
Kock, Anders Bredahl [1 ,2 ]
Preinerstorfer, David [3 ]
机构
[1] Univ Oxford, Dept Econ, Oxford, England
[2] Aarhus Univ, CREATES, Aarhus, Denmark
[3] Univ Libre Bruxelles, ECARES, Brussels, Belgium
基金
新加坡国家研究基金会;
关键词
High-dimensional testing problems; power enhancement principle; power enhancement component; asymptotic enhanceability; marginal LAN; LOCAL ASYMPTOTIC NORMALITY; COVARIANCE-MATRIX; F-TEST; HYPOTHESES;
D O I
10.3982/ECTA15844
中图分类号
F [经济];
学科分类号
02 ;
摘要
Fan, Liao, and Yao (2015) recently introduced a remarkable method for increasing the asymptotic power of tests in high-dimensional testing problems. If applicable to a given test, their power enhancement principle leads to an improved test that has the same asymptotic size, has uniformly non-inferior asymptotic power, and is consistent against a strictly broader range of alternatives than the initially given test. We study under which conditions this method can be applied and show the following: In asymptotic regimes where the dimensionality of the parameter space is fixed as sample size increases, there often exist tests that cannot be further improved with the power enhancement principle. However, when the dimensionality of the parameter space increases sufficiently slowly with sample size and a marginal local asymptotic normality (LAN) condition is satisfied, every test with asymptotic size smaller than 1 can be improved with the power enhancement principle. While the marginal LAN condition alone does not allow one to extend the latter statement to all rates at which the dimensionality increases with sample size, we give sufficient conditions under which this is the case.
引用
收藏
页码:1055 / 1069
页数:15
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