A compressive multi-kernel method for privacy-preserving machine learning

06/20/2021
by   Thee Chanyaswad, et al.
0

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 privacy protection. Each kernel matrix is compressed with a lossy projection matrix derived from the Discriminant Component Analysis (DCA). The multi-kernel stage uses the signal-to-noise ratio (SNR) score of each kernel to non-uniformly combine multiple compressive kernels. The proposed method is evaluated on two mobile-sensing datasets – MHEALTH and HAR – where activity recognition is defined as utility and person identification is defined as privacy. The results show that the compression regime is successful in privacy preservation as the privacy classification accuracies are almost at the random-guess level in all experiments. On the other hand, the novel SNR-based multi-kernel shows utility classification accuracy improvement upon the state-of-the-art in both datasets. These results indicate a promising direction for research in privacy-preserving machine learning.

READ FULL TEXT
research
07/17/2020

A Privacy-Preserving Machine Learning Scheme Using EtC Images

We propose a privacy-preserving machine learning scheme with encryption-...
research
06/06/2020

Compressive analysis and the Future of Privacy

Compressive analysis is the name given to the family of techniques that ...
research
02/26/2017

Ratio Utility and Cost Analysis for Privacy Preserving Subspace Projection

With a rapidly increasing number of devices connected to the internet, b...
research
06/20/2019

Reversible Privacy Preservation using Multi-level Encryption and Compressive Sensing

Security monitoring via ubiquitous cameras and their more extended in in...
research
03/29/2018

Privacy-preserving Sensory Data Recovery

In recent years, a large scale of various wireless sensor networks have ...
research
09/21/2018

Understanding Compressive Adversarial Privacy

Designing a data sharing mechanism without sacrificing too much privacy ...
research
02/07/2022

Learning under Storage and Privacy Constraints

Storage-efficient privacy-guaranteed learning is crucial due to enormous...

Please sign up or login with your details

Forgot password? Click here to reset