Parameter Privacy-Preserving Data Sharing: A Particle-Belief MDP Formulation
Abstract
This paper investigates parameter-privacy-preserving data sharing in continuous-state dynamical systems, where a data owner designs a data-sharing policy to support downstream estimation and control while preventing adversarial inference of a sensitive parameter. This data-sharing problem is formulated as an optimization problem that trades off privacy leakage and the impact of data sharing on the data owner's utility, subject to a data-usability constraint. We show that this problem admits an equivalent belief Markov decision process (MDP) formulation, which provides a simplified representation of the optimal policy. To efficiently characterize information-theoretic privacy leakage in continuous state and action spaces, we propose a particle-belief MDP formulation that tracks the parameter posterior via sequential Monte Carlo, yielding a tractable belief-state approximation that converges asymptotically as the number of particles increases. We further derive a tractable closed-form upper bound on particle-based MI via Gaussian mixture approximations, which enables efficient optimization of the particle-belief MDP. Experiments on a mixed-autonomy platoon show that the learned continuous policy substantially impedes inference attacks on human-driving behavior parameters while maintaining data usability and system performance.
Keywords
Cite
@article{arxiv.2602.04262,
title = {Parameter Privacy-Preserving Data Sharing: A Particle-Belief MDP Formulation},
author = {Haokun Yu and Jingyuan Zhou and Kaidi Yang},
journal= {arXiv preprint arXiv:2602.04262},
year = {2026}
}
Comments
17 pages, 10 figures