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Cauchy Combination Test: A Powerful Test With Analytic p-Value Calculation Under Arbitrary Dependency Structures
by
Liu, Yaowu
, Xie, Jun
in
Arbitrariness
/ Cauchy distribution
/ Computation
/ Computer simulation
/ Correlation analysis
/ Correlation matrix
/ Data analysis
/ Dependence
/ Dependency
/ Dependency grammar
/ Distribution
/ Genomics
/ Global hypothesis testing
/ High-dimensional data
/ Mathematical analysis
/ Nonasymptotic approximation
/ Power
/ Regression analysis
/ Sparse alternative
/ Sparsity
/ Statistical methods
/ Statistical tests
/ Statistics
/ Theory and Methods
/ Transformation
/ Values
2020
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Cauchy Combination Test: A Powerful Test With Analytic p-Value Calculation Under Arbitrary Dependency Structures
by
Liu, Yaowu
, Xie, Jun
in
Arbitrariness
/ Cauchy distribution
/ Computation
/ Computer simulation
/ Correlation analysis
/ Correlation matrix
/ Data analysis
/ Dependence
/ Dependency
/ Dependency grammar
/ Distribution
/ Genomics
/ Global hypothesis testing
/ High-dimensional data
/ Mathematical analysis
/ Nonasymptotic approximation
/ Power
/ Regression analysis
/ Sparse alternative
/ Sparsity
/ Statistical methods
/ Statistical tests
/ Statistics
/ Theory and Methods
/ Transformation
/ Values
2020
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While trying to remove the title from your shelf something went wrong :( Kindly try again later!
Do you wish to request the book?
Cauchy Combination Test: A Powerful Test With Analytic p-Value Calculation Under Arbitrary Dependency Structures
by
Liu, Yaowu
, Xie, Jun
in
Arbitrariness
/ Cauchy distribution
/ Computation
/ Computer simulation
/ Correlation analysis
/ Correlation matrix
/ Data analysis
/ Dependence
/ Dependency
/ Dependency grammar
/ Distribution
/ Genomics
/ Global hypothesis testing
/ High-dimensional data
/ Mathematical analysis
/ Nonasymptotic approximation
/ Power
/ Regression analysis
/ Sparse alternative
/ Sparsity
/ Statistical methods
/ Statistical tests
/ Statistics
/ Theory and Methods
/ Transformation
/ Values
2020
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Cauchy Combination Test: A Powerful Test With Analytic p-Value Calculation Under Arbitrary Dependency Structures
Journal Article
Cauchy Combination Test: A Powerful Test With Analytic p-Value Calculation Under Arbitrary Dependency Structures
2020
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Overview
Abstract-Combining individual p-values to aggregate multiple small effects has a long-standing interest in statistics, dating back to the classic Fisher's combination test. In modern large-scale data analysis, correlation and sparsity are common features and efficient computation is a necessary requirement for dealing with massive data. To overcome these challenges, we propose a new test that takes advantage of the Cauchy distribution. Our test statistic has a simple form and is defined as a weighted sum of Cauchy transformation of individual p-values. We prove a nonasymptotic result that the tail of the null distribution of our proposed test statistic can be well approximated by a Cauchy distribution under arbitrary dependency structures. Based on this theoretical result, the p-value calculation of our proposed test is not only accurate, but also as simple as the classic z-test or t-test, making our test well suited for analyzing massive data. We further show that the power of the proposed test is asymptotically optimal in a strong sparsity setting. Extensive simulations demonstrate that the proposed test has both strong power against sparse alternatives and a good accuracy with respect to p-value calculations, especially for very small p-values. The proposed test has also been applied to a genome-wide association study of Crohn's disease and compared with several existing tests.
Supplementary materials
for this article are available online.
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