Robin Hood: A cost-efficient two-stage approach to large-scale simultaneous inference with non-homogeneous sparse effects.

Pub Date : 2017-04-25 DOI:10.1515/sagmb-2016-0039
Jakub Pecanka, Jelle Goeman
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引用次数: 1

Abstract

A classical approach to experimental design in many scientific fields is to first gather all of the data and then analyze it in a single analysis. It has been recognized that in many areas such practice leaves substantial room for improvement in terms of the researcher's ability to identify relevant effects, in terms of cost efficiency, or both. Considerable attention has been paid in recent years to multi-stage designs, in which the user alternates between data collection and analysis and thereby sequentially reduces the size of the problem. However, the focus has generally been towards designs that require a hypothesis be tested in every single stage before it can be declared as rejected by the procedure. Such procedures are well-suited for homogeneous effects, i.e. effects of (almost) equal sizes, however, with effects of varying size a procedure that permits rejection at interim stages is much more suitable. Here we present precisely such multi-stage testing procedure called Robin Hood. We show that with heterogeneous effects our method substantially improves on the existing multi-stage procedures with an essentially zero efficiency trade-off in the homogeneous effect realm, which makes it especially useful in areas such as genetics, where heterogeneous effects are common. Our method improves on existing approaches in a number of ways including a novel way of performing two-sided testing in a multi-stage procedure with increased power for detecting small effects.

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罗宾汉:具有非均匀稀疏效应的大规模同时推理的一种经济高效的两阶段方法。
在许多科学领域,实验设计的经典方法是首先收集所有数据,然后在一次分析中对其进行分析。人们已经认识到,在许多领域,这种做法在研究人员确定相关影响的能力、成本效率或两者兼而有之方面留下了很大的改进空间。近年来,人们对多阶段设计给予了相当大的关注,在这种设计中,用户在数据收集和分析之间交替进行,从而依次减少了问题的规模。然而,设计的重点通常是要求在每个阶段都对假设进行测试,然后才能被程序宣布为拒绝。这种程序非常适合于均质效应,即(几乎)大小相等的效应,然而,对于大小不等的效应,允许在中间阶段拒绝的程序更为合适。在这里,我们精确地介绍了这种称为罗宾汉的多阶段测试程序。我们表明,对于异质效应,我们的方法大大改进了现有的多阶段程序,在同质效应领域中基本上没有效率权衡,这使得它在异质效应普遍存在的遗传学等领域特别有用。我们的方法在许多方面改进了现有的方法,包括在多阶段程序中执行双侧测试的新方法,提高了检测小影响的能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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