Tradeoffs among Action Taking Policies Matter in Active Sequential Multi-Hypothesis Testing: the Optimal Error Exponent Region
Chia-Yu Hsu, I-Hsiang Wang

TL;DR
This paper characterizes the fundamental limits of error exponents in active sequential multi-hypothesis testing with adaptive sampling and source selection constraints, introducing a new optimal tradeoff analysis among error types.
Contribution
It provides the first comprehensive analysis of error exponent tradeoffs in active sequential multi-hypothesis testing with adaptive source selection under budget constraints.
Findings
Characterized optimal error exponent tradeoffs among multiple hypotheses.
Proposed an asymptotically optimal test balancing exploration and exploitation.
Uncovered fundamental tension among different action policies in hypothesis testing.
Abstract
Reliability of sequential hypothesis testing can be greatly improved when the decision maker is given the freedom to adaptively take an action that determines the distribution of the current collected sample. Such advantage of sampling adaptivity has been realized since Chernoff's seminal paper in 1959 [1]. While a large body of works have explored and investigated the gain of adaptivity, in the general multiple-hypothesis setting, the fundamental limits of individual error probabilities have not been fully understood. In particular, in the asymptotic regime as the expected stopping time tends to infinity, the error exponents are only characterized in specific cases, such as that of the total error probability. In this paper, we consider a general setup of active sequential multiple-hypothesis testing where at each time slot, a temporally varying subset of data sources (out of a known…
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Taxonomy
TopicsExplainable Artificial Intelligence (XAI) · Forecasting Techniques and Applications · Fault Detection and Control Systems
