Safe, Always-Valid Alpha-Investing Rules For Doubly Sequential Online Inference
By: Zeyu Yao, Bowen Gang, Wenguang Sun
Dynamic decision-making in rapidly evolving research domains, including marketing, finance, and pharmaceutical development, presents a significant challenge. Researchers frequently confront the need for real-time action within a doubly sequential framework characterized by the continuous influx of high-volume data streams and the intermittent arrival of novel tasks. This calls for the development and implementation of new online inference protocols capable of handling both the continuous processing of incoming information and the efficient allocation of resources to address emerging priorities. We introduce a novel class of Safe and Always-Valid Alpha-investing (SAVA) rules that leverages powerful tools including always valid p-values, e-processes, and online false discovery rate methods. The SAVA algorithm effectively integrates information across all tasks, mitigates the alpha-death problem, and controls the false selection rate (FSR) at all decision points. We validate the efficacy of the SAVA framework through rigorous theoretical analysis and extensive numerical experiments. Our results demonstrate that SAVA not only offers effective control of the FSR but also significantly improves statistical power compared to traditional online testing approaches.
Similar Papers
Feedback-Enhanced Online Multiple Testing with Applications to Conformal Selection
Methodology
Improves computer decisions with new feedback.
e-GAI: e-value-based Generalized $α$-Investing for Online False Discovery Rate Control
Methodology
Finds important patterns without too many false alarms.
Efficient Safety Testing of Autonomous Vehicles via Adaptive Search over Crash-Derived Scenarios
Robotics
Tests self-driving cars faster in dangerous situations.