Controlled Sensing for Multi-Hypothesis Testing with Co-Dependent ActionsDownload PDFOpen Website

Published: 2018, Last Modified: 21 Feb 2024ISIT 2018Readers: Everyone
Abstract: Multi-hypothesis testing, which is widely used in many domains for discerning the true model governing the data, is often studied in a fixed sample-size setting. In such settings, the data-acquisition and decision-making processes are decoupled and the data-acquisition policies are pre-specified. Motivated by the advantages of sequential sampling, this paper treats the inherently coupled problems of data-acquisition and decision-making for multi-hypothesis testing, where data-acquisition can be abstracted as selecting one possible sensing action from a finite set. It aims to devise the quickest detection strategy by characterizing the minimum number of samples required to make a reliable decision as well as designing the dynamic attendant decision rules for selecting the best actions. The setting in which the available control actions are co-dependent is considered, which is a major distinction from the existing literature. Specifically, the existing data-adaptive approaches lose their optimality guarantees for this problem as they fail to account for such dependence. A novel sampling strategy that incorporates the dependence of the control actions into its decision rules is proposed, and its optimality properties are established.
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