No-Regret Algorithms for Private Gaussian Process Bandit Optimization

02/24/2021
by   Abhimanyu Dubey, et al.
0

The widespread proliferation of data-driven decision-making has ushered in a recent interest in the design of privacy-preserving algorithms. In this paper, we consider the ubiquitous problem of gaussian process (GP) bandit optimization from the lens of privacy-preserving statistics. We propose a solution for differentially private GP bandit optimization that combines a uniform kernel approximator with random perturbations, providing a generic framework to create differentially-private (DP) Gaussian process bandit algorithms. For two specific DP settings - joint and local differential privacy, we provide algorithms based on efficient quadrature Fourier feature approximators, that are computationally efficient and provably no-regret for popular stationary kernel functions. Our algorithms maintain differential privacy throughout the optimization procedure and critically do not rely explicitly on the sample path for prediction, making the parameters straightforward to release as well.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
01/31/2023

Differentially Private Kernel Inducing Points (DP-KIP) for Privacy-preserving Data Distillation

While it is tempting to believe that data distillation preserves privacy...
research
10/13/2020

Local Differential Privacy for Bayesian Optimization

Motivated by the increasing concern about privacy in nowadays data-inten...
research
06/30/2023

Differential Privacy May Have a Potential Optimization Effect on Some Swarm Intelligence Algorithms besides Privacy-preserving

Differential privacy (DP), as a promising privacy-preserving model, has ...
research
07/22/2021

Differentially Private Algorithms for 2020 Census Detailed DHC Race & Ethnicity

This article describes a proposed differentially private (DP) algorithms...
research
12/02/2021

Differentially Private Exploration in Reinforcement Learning with Linear Representation

This paper studies privacy-preserving exploration in Markov Decision Pro...
research
02/19/2023

Sample-efficient private data release for Lipschitz functions under sparsity assumptions

Differential privacy is the de facto standard for protecting privacy in ...
research
12/09/2019

Location Trace Privacy Under Conditional Priors

Providing meaningful privacy to users of location based services is part...

Please sign up or login with your details

Forgot password? Click here to reset