Differential Privacy for Symbolic Systems with Application to Markov Chains

02/07/2022
by   Bo Chen, et al.
0

Data-driven systems are gathering increasing amounts of data from users, and sensitive user data requires privacy protections. In some cases, the data gathered is non-numerical or symbolic, and conventional approaches to privacy, e.g., adding noise, do not apply, though such systems still require privacy protections. Accordingly, we present a novel differential privacy framework for protecting trajectories generated by symbolic systems. These trajectories can be represented as words or strings over a finite alphabet. We develop new differential privacy mechanisms that approximate a sensitive word using a random word that is likely to be near it. An offline mechanism is implemented efficiently using a Modified Hamming Distance Automaton to generate whole privatized output words over a finite time horizon. Then, an online mechanism is implemented by taking in a sensitive symbol and generating a randomized output symbol at each timestep. This work is extended to Markov chains to generate differentially private state sequences that a given Markov chain could have produced. Statistical accuracy bounds are developed to quantify the accuracy of these mechanisms, and numerical results validate the accuracy of these techniques for strings of English words.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
09/23/2018

Towards Differential Privacy for Symbolic Systems

In this paper, we develop a privacy implementation for symbolic control ...
research
06/22/2022

Optimal Local Bayesian Differential Privacy over Markov Chains

In the literature of data privacy, differential privacy is the most popu...
research
07/25/2020

Coupled Relational Symbolic Execution for Differential Privacy

Differential privacy is a de facto standard in data privacy with applica...
research
04/06/2020

Differentially Private Formation Control

As multi-agent systems proliferate, there is increasing demand for coord...
research
06/25/2022

Cactus Mechanisms: Optimal Differential Privacy Mechanisms in the Large-Composition Regime

Most differential privacy mechanisms are applied (i.e., composed) numero...
research
08/18/2022

Verifiable Differential Privacy For When The Curious Become Dishonest

Many applications seek to produce differentially private statistics on s...
research
01/20/2023

Differential Privacy in Cooperative Multiagent Planning

Privacy-aware multiagent systems must protect agents' sensitive data whi...

Please sign up or login with your details

Forgot password? Click here to reset