Signal Recovery With Multistage Tests And Without Sparsity Constraints
Yiming Xing, Georgios Fellouris

TL;DR
This paper introduces a novel multistage testing procedure for signal recovery across multiple data streams that achieves high-dimensional asymptotic optimality without requiring sparsity or symmetry conditions, outperforming existing methods.
Contribution
It proposes a new multistage testing method that is asymptotically optimal in high dimensions without sparsity assumptions, extending the theory and practice of sequential binary testing.
Findings
Achieves asymptotic optimality for expected sample size across all streams.
Performs well under non-iid data and composite hypotheses.
Outperforms existing tests under broader conditions.
Abstract
A signal recovery problem is considered, where the same binary testing problem is posed over multiple, independent data streams. The goal is to identify all signals, i.e., streams where the alternative hypothesis is correct, and noises, i.e., streams where the null hypothesis is correct, subject to prescribed bounds on the classical or generalized familywise error probabilities. It is not required that the exact number of signals be a priori known, only upper bounds on the number of signals and noises are assumed instead. A decentralized formulation is adopted, according to which the sample size and the decision for each testing problem must be based only on observations from the corresponding data stream. A novel multistage testing procedure is proposed for this problem and is shown to enjoy a high-dimensional asymptotic optimality property. Specifically, it achieves the optimal,…
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Taxonomy
TopicsDistributed Sensor Networks and Detection Algorithms · Advanced Statistical Process Monitoring · Machine Learning and Algorithms
