Anonymous Heterogeneous Distributed Detection: Optimal Decision Rules, Error Exponents, and the Price of Anonymity
Wei-Ning Chen, I-Hsiang Wang

TL;DR
This paper investigates the fundamental limits of anonymous heterogeneous distributed detection, proposing an optimal mixture likelihood ratio test, analyzing error exponents, and exploring the impact of anonymity on detection performance.
Contribution
It introduces an optimal symmetric test for anonymous heterogeneous detection, characterizes error exponents, and extends results to M-ary hypotheses and Byzantine attack scenarios.
Findings
Optimal mixture likelihood ratio test is identified.
Error exponents are characterized under the Neyman-Pearson framework.
The study reveals the cost of anonymity in detection performance.
Abstract
We explore the fundamental limits of heterogeneous distributed detection in an anonymous sensor network with n sensors and a single fusion center. The fusion center collects the single observation from each of the n sensors to detect a binary parameter. The sensors are clustered into multiple groups, and different groups follow different distributions under a given hypothesis. The key challenge for the fusion center is the anonymity of sensors - although it knows the exact number of sensors and the distribution of observations in each group, it does not know which group each sensor belongs to. It is hence natural to consider it as a composite hypothesis testing problem. First, we propose an optimal test called mixture likelihood ratio test based on the ratio of the uniform mixture of all distributions under one hypothesis to that under the other. Optimality is shown by first arguing…
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Taxonomy
TopicsDistributed Sensor Networks and Detection Algorithms · Target Tracking and Data Fusion in Sensor Networks · Wireless Communication Security Techniques
