A general adaptive framework for multivariate point null testing
Adam Elder,Marco Carone,Peter Gibert,Alex Luedtke +3 more
- 03 Mar 2022
TL;DR: In this paper , a general framework for testing a multivariate point null hypothesis is proposed, in which the test statistic is adaptively selected to provide increased power, and theoretical large-sample guarantees for the test under both fixed and local alternatives.
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Abstract: As a common step in refining their scientific inquiry, investigators are often interested in performing some screening of a collection of given statistical hypotheses. For example, they may wish to determine whether any one of several patient characteristics are associated with a health outcome of interest. Existing generic methods for testing a multivariate hypothesis — such as multiplicity corrections applied to individual hypothesis tests — can easily be applied across a variety of problems but can suffer from low power in some settings. Tailor-made procedures can attain higher power by building around problem-specific information but typically cannot be easily adapted to novel settings. In this work, we propose a general framework for testing a multivariate point null hypothesis in which the test statistic is adaptively selected to provide increased power. We present theoretical large-sample guarantees for our test under both fixed and local alternatives. In simulation studies, we show that tests created using our framework can perform as well as tailor-made methods when the latter are available, and we illustrate how our procedure can be used to create tests in two settings in which tailor-made methods are not currently available.
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References
A Simple Sequentially Rejective Multiple Test Procedure
TL;DR: In this paper, a simple and widely accepted multiple test procedure of the sequentially rejective type is presented, i.e. hypotheses are rejected one at a time until no further rejections can be done.
Regularization Paths for Generalized Linear Models via Coordinate Descent
TL;DR: In comparative timings, the new algorithms are considerably faster than competing methods and can handle large problems and can also deal efficiently with sparse features.
A sharper Bonferroni procedure for multiple tests of significance
TL;DR: In this article, a simple procedure for multiple tests of significance based on individual p-values is derived, which is sharper than Holm's (1979) sequentially rejective procedure.
Multiple Comparisons among Means
TL;DR: In this paper, the authors considered the possibility of picking in advance a number (say m) of linear contrasts among k means, and then estimating these m linear contrasts by confidence intervals based on a Student t statistic, in such a way that the overall confidence level for the m intervals is greater than or equal to a preassigned value.
Statistical Modeling: The Two Cultures (with comments and a rejoinder by the author)
TL;DR: Algorithmic models have been widely used in fields outside statistics as discussed by the authors, both in theory and practice, and can be used both on large complex data sets and as a more accurate and informative alternative to data modeling on smaller data sets.