Approximately Truthful Multi-Agent Optimization Using Cloud-Enforced Joint Differential Privacy
M.T. Hale, M. Egerstedt

TL;DR
This paper introduces a multi-agent optimization framework that uses cloud-enforced joint differential privacy to prevent agents from misreporting their states, ensuring truthful reporting in nonlinear, coupled constraint problems.
Contribution
It presents a novel primal-dual multi-agent coordination method with cloud-based joint differential privacy to disincentivize false state reporting.
Findings
The framework effectively deters misreporting through noise addition.
The algorithm converges under joint differential privacy constraints.
Bounds on potential cost reduction from misreporting are established.
Abstract
Multi-agent coordination problems often require agents to exchange state information in order to reach some collective goal, such as agreement on a final state value. In some cases, it is feasible that opportunistic agents may deceptively report false state values for their own benefit, e.g., to claim a larger portion of shared resources. Motivated by such cases, this paper presents a multi-agent coordination framework which disincentivizes opportunistic misreporting of state information. This paper focuses on multi-agent coordination problems that can be stated as nonlinear programs, with non-separable constraints coupling the agents. In this setting, an opportunistic agent may be tempted to skew the problem's constraints in its favor to reduce its local cost, and this is exactly the behavior we seek to disincentivize. The framework presented uses a primal-dual approach wherein the…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Mobile Crowdsensing and Crowdsourcing · Vehicular Ad Hoc Networks (VANETs)
