Testability of high-dimensional linear models with nonsparse structures.

IF 3.7 1区 数学 Q1 STATISTICS & PROBABILITY Annals of Statistics Pub Date : 2022-04-01 Epub Date: 2022-04-07 DOI:10.1214/19-aos1932
Jelena Bradic, Jianqing Fan, Yinchu Zhu
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引用次数: 11

Abstract

Understanding statistical inference under possibly non-sparse high-dimensional models has gained much interest recently. For a given component of the regression coefficient, we show that the difficulty of the problem depends on the sparsity of the corresponding row of the precision matrix of the covariates, not the sparsity of the regression coefficients. We develop new concepts of uniform and essentially uniform non-testability that allow the study of limitations of tests across a broad set of alternatives. Uniform non-testability identifies a collection of alternatives such that the power of any test, against any alternative in the group, is asymptotically at most equal to the nominal size. Implications of the new constructions include new minimax testability results that, in sharp contrast to the current results, do not depend on the sparsity of the regression parameters. We identify new tradeoffs between testability and feature correlation. In particular, we show that, in models with weak feature correlations, minimax lower bound can be attained by a test whose power has the n rate, regardless of the size of the model sparsity.

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非稀疏结构高维线性模型的可测试性。
在可能非稀疏的高维模型下理解统计推断最近引起了人们极大的兴趣。对于回归系数的给定分量,我们表明问题的难度取决于协变量的精度矩阵的相应行的稀疏性,而不是回归系数的稀疏性。我们开发了统一和本质上统一的不可测试性的新概念,允许在广泛的替代方案中研究测试的局限性。一致不可测试性标识了一组选择,使得任何测试对组中任何选择的幂,渐近地至多等于标称大小。新结构的含义包括新的极大极小可测试性结果,与当前结果形成鲜明对比,不依赖于回归参数的稀疏性。我们在可测试性和特征相关性之间找到了新的权衡。特别是,我们表明,在具有弱特征相关性的模型中,无论模型稀疏度的大小,极小极大下界都可以通过幂次为n的测试获得。
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来源期刊
Annals of Statistics
Annals of Statistics 数学-统计学与概率论
CiteScore
9.30
自引率
8.90%
发文量
119
审稿时长
6-12 weeks
期刊介绍: The Annals of Statistics aim to publish research papers of highest quality reflecting the many facets of contemporary statistics. Primary emphasis is placed on importance and originality, not on formalism. The journal aims to cover all areas of statistics, especially mathematical statistics and applied & interdisciplinary statistics. Of course many of the best papers will touch on more than one of these general areas, because the discipline of statistics has deep roots in mathematics, and in substantive scientific fields.
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