CRAILGMay 9, 2020

Utility-aware Privacy-preserving Data Releasing

arXiv:2005.04369v12 citations
Originality Incremental advance
AI Analysis

This work addresses the challenge for data owners in cloud-based applications to release data that is both useful for services and secure against privacy breaches, representing an incremental improvement over existing methods.

The paper tackles the problem of releasing privatized data that maintains utility for intended purposes while protecting sensitive information, proposing a two-step perturbation framework that learns from public data to balance privacy and utility, with experiments on three datasets demonstrating its effectiveness.

In the big data era, more and more cloud-based data-driven applications are developed that leverage individual data to provide certain valuable services (the utilities). On the other hand, since the same set of individual data could be utilized to infer the individual's certain sensitive information, it creates new channels to snoop the individual's privacy. Hence it is of great importance to develop techniques that enable the data owners to release privatized data, that can still be utilized for certain premised intended purpose. Existing data releasing approaches, however, are either privacy-emphasized (no consideration on utility) or utility-driven (no guarantees on privacy). In this work, we propose a two-step perturbation-based utility-aware privacy-preserving data releasing framework. First, certain predefined privacy and utility problems are learned from the public domain data (background knowledge). Later, our approach leverages the learned knowledge to precisely perturb the data owners' data into privatized data that can be successfully utilized for certain intended purpose (learning to succeed), without jeopardizing certain predefined privacy (training to fail). Extensive experiments have been conducted on Human Activity Recognition, Census Income and Bank Marketing datasets to demonstrate the effectiveness and practicality of our framework.

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