Multi-Sensor Distributed Hypothesis Testing in the Low-Power Regime
C\'ecile Bouette, Mich\`ele Wigger

TL;DR
This paper analyzes the limits of distributed hypothesis testing over multiple access channels with low power, showing when communication is unnecessary and identifying conditions where additional communication improves detection performance.
Contribution
It provides a characterization of the Stein-exponent in distributed hypothesis testing over MACs, including conditions where communication does not enhance detection performance.
Findings
Communication can be unnecessary under certain channel and cost conditions.
For non-fully-connected MACs, additional communication improves the Stein-exponent.
Results apply to Gaussian and fully-connected DMMACs under various constraints.
Abstract
We characterize the Stein-exponent of a distributed hypothesis testing scenario where two sensors transmit information through a memoryless multiple access channel (MAC) subject to a sublinear input cost constraint with respect to the number of channel uses and where the decision center has access to an additional local observation. Our main theorem provides conditions on the channel and cost functions for which the Stein-exponent of this distributed setup is no larger than the Stein-exponent of the local test at the decision center. Under these conditions, communication from the sensors to the decision center is thus useless in terms of Stein-exponent. The conditions are satisfied for additive noise MACs with generalized Gaussian noise under a p-th moment constraint (including the Gaussian channel with second-moment constraint) and for the class of fully-connected (where all inputs can…
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Taxonomy
TopicsDistributed Sensor Networks and Detection Algorithms · Wireless Communication Security Techniques · Random Matrices and Applications
