SILGMLJul 20, 2019

Differentially Private Link Prediction With Protected Connections

arXiv:1908.04849v20.002 citations
AI Analysis55

This addresses privacy concerns for users in social networks or similar systems who want to keep certain connections confidential, representing an incremental improvement in privacy-preserving link prediction.

The paper tackles the problem of link prediction while protecting private connections by proposing a differentially private algorithm, DPLP, which trades off privacy leakage and accuracy, showing effectiveness in experiments with real-life graphs.

Link prediction (LP) algorithms propose to each node a ranked list of nodes that are currently non-neighbors, as the most likely candidates for future linkage. Owing to increasing concerns about privacy, users (nodes) may prefer to keep some of their connections protected or private. Motivated by this observation, our goal is to design a differentially private LP algorithm, which trades off between privacy of the protected node-pairs and the link prediction accuracy. More specifically, we first propose a form of differential privacy on graphs, which models the privacy loss only of those node-pairs which are marked as protected. Next, we develop DPLP , a learning to rank algorithm, which applies a monotone transform to base scores from a non-private LP system, and then adds noise. DPLP is trained with a privacy induced ranking loss, which optimizes the ranking utility for a given maximum allowed level of privacy leakage of the protected node-pairs. Under a recently-introduced latent node embedding model, we present a formal trade-off between privacy and LP utility. Extensive experiments with several real-life graphs and several LP heuristics show that DPLP can trade off between privacy and predictive performance more effectively than several alternatives.

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