Privacy-Preserving Synthetic Data Generation for Recommendation Systems
Fan Liu, Zhiyong Cheng, Huilin Chen, Yinwei Wei, Liqiang Nie, Mohan, Kankanhalli

TL;DR
This paper introduces UPC-SDG, a method for generating privacy-controlled synthetic user interaction data that balances privacy guarantees with data utility for recommendation systems.
Contribution
The paper proposes a novel synthetic data generation model that incorporates user privacy preferences and balances privacy with data utility in recommendation systems.
Findings
Effective in generating privacy-preserving synthetic data
Balances privacy and utility through a novel trade-off strategy
Demonstrates superior performance on public datasets
Abstract
Recommendation systems make predictions chiefly based on users' historical interaction data (e.g., items previously clicked or purchased). There is a risk of privacy leakage when collecting the users' behavior data for building the recommendation model. However, existing privacy-preserving solutions are designed for tackling the privacy issue only during the model training and results collection phases. The problem of privacy leakage still exists when directly sharing the private user interaction data with organizations or releasing them to the public. To address this problem, in this paper, we present a User Privacy Controllable Synthetic Data Generation model (short for UPC-SDG), which generates synthetic interaction data for users based on their privacy preferences. The generation model aims to provide certain privacy guarantees while maximizing the utility of the generated synthetic…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Recommender Systems and Techniques · Human Mobility and Location-Based Analysis
