PAC learning halfspaces in non-interactive local differential privacy model with public unlabeled data

JOURNAL OF COMPUTER AND SYSTEM SCIENCES(2024)

Cited 0|Views10
No score
Abstract
In this paper, we study the problem of PAC learning halfspaces in the non-interactive local differential privacy model (NLDP). To breach the barrier of exponential sample complexity, previous results studied a relaxed setting where the server has access to some additional public but unlabeled data. We continue in this direction. Specifically, we consider the problem under the standard setting instead of the large margin setting studied before. Under different mild assumptions on the underlying data distribution, we propose two approaches that are based on the Massart noise model and self-supervised learning and show that it is possible to achieve sample complexities that are only linear in the dimension and polynomial in other terms for both private and public data, which significantly improve the previous results. Our methods could also be used for other private PAC learning problems.(c) 2023 Elsevier Inc. All rights reserved.
More
Translated text
Key words
Differential privacy,PAC learning,Stochastic optimization
AI Read Science
Must-Reading Tree
Example
Generate MRT to find the research sequence of this paper
Chat Paper
Summary is being generated by the instructions you defined