Online control of the false discovery rate with decaying memory
Aaditya Ramdas, Fanny Yang, Martin J. Wainwright, Michael I. Jordan

TL;DR
This paper advances online FDR control by enhancing generalized alpha-investing algorithms with improved power, prior weights, differentiated penalties, and a new decaying memory FDR measure, suitable for temporal applications.
Contribution
It introduces GAI++ algorithms that integrate four key generalizations, improving power, incorporating domain knowledge, prioritizing hypotheses, and addressing temporal dynamics.
Findings
Enhanced power of GAI procedures by allocating more alpha-wealth.
Incorporation of prior weights improves hypothesis testing efficiency.
Introduction of mem-FDR for better temporal relevance.
Abstract
In the online multiple testing problem, p-values corresponding to different null hypotheses are observed one by one, and the decision of whether or not to reject the current hypothesis must be made immediately, after which the next p-value is observed. Alpha-investing algorithms to control the false discovery rate (FDR), formulated by Foster and Stine, have been generalized and applied to many settings, including quality-preserving databases in science and multiple A/B or multi-armed bandit tests for internet commerce. This paper improves the class of generalized alpha-investing algorithms (GAI) in four ways: (a) we show how to uniformly improve the power of the entire class of monotone GAI procedures by awarding more alpha-wealth for each rejection, giving a win-win resolution to a recent dilemma raised by Javanmard and Montanari, (b) we demonstrate how to incorporate prior weights to…
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Taxonomy
TopicsStatistical Methods in Clinical Trials · Machine Learning and Algorithms · Imbalanced Data Classification Techniques
