集成学习
计算机科学
航程(航空)
空(SQL)
光学(聚焦)
班级(哲学)
I类和II类错误
集合预报
领域(数学分析)
统计假设检验
机器学习
人工智能
随机森林
无效假设
数据挖掘
数学
统计
工程类
光学
物理
数学分析
航空航天工程
作者
Yaowu Liu,Zhonghua Liu,Xihong Lin
标识
DOI:10.1093/jrsssb/qkad131
摘要
Abstract Testing a global null is a canonical problem in statistics and has a wide range of applications. In view of the fact that no uniformly most powerful test exists, prior and/or domain knowledge are commonly used to focus on a certain class of alternatives to improve the testing power. However, it is generally challenging to develop tests that are particularly powerful against a certain class of alternatives. In this paper, motivated by the success of ensemble learning methods for prediction or classification, we propose an ensemble framework for testing that mimics the spirit of random forests to deal with the challenges. Our ensemble testing framework aggregates a collection of weak base tests to form a final ensemble test that maintains strong and robust power for global nulls. We apply the framework to four problems about global testing in different classes of alternatives arising from whole-genome sequencing (WGS) association studies. Specific ensemble tests are proposed for each of these problems, and their theoretical optimality is established in terms of Bahadur efficiency. Extensive simulations and an analysis of a real WGS dataset are conducted to demonstrate the type I error control and/or power gain of the proposed ensemble tests.
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