Differential Privacy in Kernelized Contextual Bandits via Random Projections
- URL: http://arxiv.org/abs/2507.13639v1
- Date: Fri, 18 Jul 2025 03:54:49 GMT
- Title: Differential Privacy in Kernelized Contextual Bandits via Random Projections
- Authors: Nikola Pavlovic, Sudeep Salgia, Qing Zhao,
- Abstract summary: We consider the problem of contextual kernel bandits with contexts.<n>The underlying reward function belongs to a known Reproducing Kernel Hilbert Space.<n>We propose a novel algorithm that achieves the state-of-the-art cumulative regret of $widetildemathcalO(sqrtgamma_TT+fracgamma_Tvarepsilon_mathrmDP)$
- Score: 8.658538065693206
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: We consider the problem of contextual kernel bandits with stochastic contexts, where the underlying reward function belongs to a known Reproducing Kernel Hilbert Space. We study this problem under an additional constraint of Differential Privacy, where the agent needs to ensure that the sequence of query points is differentially private with respect to both the sequence of contexts and rewards. We propose a novel algorithm that achieves the state-of-the-art cumulative regret of $\widetilde{\mathcal{O}}(\sqrt{\gamma_TT}+\frac{\gamma_T}{\varepsilon_{\mathrm{DP}}})$ and $\widetilde{\mathcal{O}}(\sqrt{\gamma_TT}+\frac{\gamma_T\sqrt{T}}{\varepsilon_{\mathrm{DP}}})$ over a time horizon of $T$ in the joint and local models of differential privacy, respectively, where $\gamma_T$ is the effective dimension of the kernel and $\varepsilon_{\mathrm{DP}} > 0$ is the privacy parameter. The key ingredient of the proposed algorithm is a novel private kernel-ridge regression estimator which is based on a combination of private covariance estimation and private random projections. It offers a significantly reduced sensitivity compared to its classical counterpart while maintaining a high prediction accuracy, allowing our algorithm to achieve the state-of-the-art performance guarantees.
Related papers
- Smoothed Normalization for Efficient Distributed Private Optimization [54.197255548244705]
Federated learning enables machine learning models with privacy of participants.<n>There is no differentially private distributed method for training, non-feedback problems.<n>We introduce a new distributed algorithm $alpha$-$sf NormEC$ with provable convergence guarantees.
arXiv Detail & Related papers (2025-02-19T07:10:32Z) - Differentially Private Kernelized Contextual Bandits [8.658538065693206]
We consider the problem of contextual kernel bandits with contexts, where the underlying reward function belongs to a known Reproducing Kernel Hilbert Space (RKHS)<n>We propose a novel algorithm that improves upon the state of the art and achieves an error rate of $mathcalOleft(sqrtfracgamma_TT + fracgamma_TT varepsilonright)$ after $T$ queries.
arXiv Detail & Related papers (2025-01-13T04:05:19Z) - Perturb-and-Project: Differentially Private Similarities and Marginals [73.98880839337873]
We revisit the input perturbations framework for differential privacy where noise is added to the input $Ain mathcalS$.
We first design novel efficient algorithms to privately release pair-wise cosine similarities.
We derive a novel algorithm to compute $k$-way marginal queries over $n$ features.
arXiv Detail & Related papers (2024-06-07T12:07:16Z) - PrivSGP-VR: Differentially Private Variance-Reduced Stochastic Gradient Push with Tight Utility Bounds [9.47030623916154]
We propose a differentially private decentralized learning method (termed PrivSGPVR) which employs gradient push with variance reduction and guarantees privacy for each node.
Our theoretical analysis shows that, under DP noise with constant variance, PrivGPS-VR achieves a sub-linear convergence rate of $mathcalO (1/sqrtnK)$.
arXiv Detail & Related papers (2024-05-04T11:22:53Z) - A Generalized Shuffle Framework for Privacy Amplification: Strengthening Privacy Guarantees and Enhancing Utility [4.7712438974100255]
We show how to shuffle $(epsilon_i,delta_i)$-PLDP setting with personalized privacy parameters.
We prove that shuffled $(epsilon_i,delta_i)$-PLDP process approximately preserves $mu$-Gaussian Differential Privacy with mu = sqrtfrac2sum_i=1n frac1-delta_i1+eepsilon_i-max_ifrac1-delta_i1+e
arXiv Detail & Related papers (2023-12-22T02:31:46Z) - Kernel $ε$-Greedy for Multi-Armed Bandits with Covariates [5.115048067424624]
We estimate the unknown mean reward functions using an online weighted kernel ridge regression estimator.<n>We show that for any choice of kernel and the corresponding RKHS, we achieve a sub-linear regret rate depending on the intrinsic dimensionality of the RKHS.
arXiv Detail & Related papers (2023-06-29T22:48:34Z) - Private Online Prediction from Experts: Separations and Faster Rates [74.52487417350221]
Online prediction from experts is a fundamental problem in machine learning and several works have studied this problem under privacy constraints.
We propose and analyze new algorithms for this problem that improve over the regret bounds of the best existing algorithms for non-adaptive adversaries.
arXiv Detail & Related papers (2022-10-24T18:40:19Z) - Misspecified Gaussian Process Bandit Optimization [59.30399661155574]
Kernelized bandit algorithms have shown strong empirical and theoretical performance for this problem.
We introduce a emphmisspecified kernelized bandit setting where the unknown function can be $epsilon$--uniformly approximated by a function with a bounded norm in some Reproducing Kernel Hilbert Space (RKHS)
We show that our algorithm achieves optimal dependence on $epsilon$ with no prior knowledge of misspecification.
arXiv Detail & Related papers (2021-11-09T09:00:02Z) - Non-Euclidean Differentially Private Stochastic Convex Optimization [15.302167005107135]
We show that noisy gradient descent (SGD) algorithms attain the optimal excess risk in low-dimensional regimes.
Our work draws upon concepts from the geometry of normed spaces, such as the notions of regularity, uniform convexity, and uniform smoothness.
arXiv Detail & Related papers (2021-03-01T19:48:44Z) - No-Regret Algorithms for Private Gaussian Process Bandit Optimization [13.660643701487002]
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.
Our algorithms maintain differential privacy throughout the optimization procedure and critically do not rely explicitly on the sample path for prediction.
arXiv Detail & Related papers (2021-02-24T18:52:24Z) - Learning with User-Level Privacy [61.62978104304273]
We analyze algorithms to solve a range of learning tasks under user-level differential privacy constraints.
Rather than guaranteeing only the privacy of individual samples, user-level DP protects a user's entire contribution.
We derive an algorithm that privately answers a sequence of $K$ adaptively chosen queries with privacy cost proportional to $tau$, and apply it to solve the learning tasks we consider.
arXiv Detail & Related papers (2021-02-23T18:25:13Z) - Private Stochastic Non-Convex Optimization: Adaptive Algorithms and
Tighter Generalization Bounds [72.63031036770425]
We propose differentially private (DP) algorithms for bound non-dimensional optimization.
We demonstrate two popular deep learning methods on the empirical advantages over standard gradient methods.
arXiv Detail & Related papers (2020-06-24T06:01:24Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.