A compressive multi-kernel method for privacy-preserving machine learning
Thee Chanyaswad, J. Morris Chang, S.Y. Kung

TL;DR
This paper introduces a novel privacy-preserving machine learning method combining compressive privacy and multi-kernel techniques, achieving high privacy protection while improving utility classification accuracy on mobile-sensing datasets.
Contribution
It proposes a compressive multi-kernel approach that integrates lossy data encoding with multi-kernel learning, a novel combination not previously explored.
Findings
Privacy classification accuracy is near random chance, indicating effective privacy protection.
Utility classification accuracy surpasses state-of-the-art methods on mobile-sensing datasets.
The method demonstrates a promising balance between privacy preservation and utility enhancement.
Abstract
As the analytic tools become more powerful, and more data are generated on a daily basis, the issue of data privacy arises. This leads to the study of the design of privacy-preserving machine learning algorithms. Given two objectives, namely, utility maximization and privacy-loss minimization, this work is based on two previously non-intersecting regimes -- Compressive Privacy and multi-kernel method. Compressive Privacy is a privacy framework that employs utility-preserving lossy-encoding scheme to protect the privacy of the data, while multi-kernel method is a kernel based machine learning regime that explores the idea of using multiple kernels for building better predictors. The compressive multi-kernel method proposed consists of two stages -- the compression stage and the multi-kernel stage. The compression stage follows the Compressive Privacy paradigm to provide the desired…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Internet Traffic Analysis and Secure E-voting · Wireless Communication Security Techniques
