Exploiting Trust for Resilient Hypothesis Testing with Malicious Robots
Matthew Cavorsi, Orhan Eren Akg\"un, Michal Yemini, Andrea Goldsmith,, and Stephanie Gil

TL;DR
This paper presents a resilient hypothesis testing framework for multi-robot crowdsensing that leverages trust observations to detect malicious robots, achieving significant error reduction even when malicious robots are in the majority.
Contribution
It introduces two algorithms, 2SA and A-GLRT, that utilize trust data to improve decision making in adversarial multi-robot networks, with proven robustness and practical deployment.
Findings
Reduced detection error to around 30% in experiments
Algorithms remain computationally tractable despite unknown parameters
Effective even when malicious robots outnumber legitimate ones
Abstract
We develop a resilient binary hypothesis testing framework for decision making in adversarial multi-robot crowdsensing tasks. This framework exploits stochastic trust observations between robots to arrive at tractable, resilient decision making at a centralized Fusion Center (FC) even when i) there exist malicious robots in the network and their number may be larger than the number of legitimate robots, and ii) the FC uses one-shot noisy measurements from all robots. We derive two algorithms to achieve this. The first is the Two Stage Approach (2SA) that estimates the legitimacy of robots based on received trust observations, and provably minimizes the probability of detection error in the worst-case malicious attack. Here, the proportion of malicious robots is known but arbitrary. For the case of an unknown proportion of malicious robots, we develop the Adversarial Generalized…
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Taxonomy
TopicsAdversarial Robustness in Machine Learning · Distributed Sensor Networks and Detection Algorithms · Privacy-Preserving Technologies in Data
