Probabilistic Matrix Factorization with Personalized Differential Privacy

10/19/2018
by   Shun Zhang, et al.
0

Probabilistic matrix factorization (PMF) plays a crucial role in recommendation systems. It requires a large amount of user data (such as user shopping records and movie ratings) to predict personal preferences, and thereby provides users high-quality recommendation services, which expose the risk of leakage of user privacy. Differential privacy, as a provable privacy protection framework, has been applied widely to recommendation systems. It is common that different individuals have different levels of privacy requirements on items. However, traditional differential privacy can only provide a uniform level of privacy protection for all users. In this paper, we mainly propose a probabilistic matrix factorization recommendation scheme with personalized differential privacy (PDP-PMF). It aims to meet users' privacy requirements specified at the item-level instead of giving the same level of privacy guarantees for all. We then develop a modified sampling mechanism (with bounded differential privacy) for achieving PDP. We also perform a theoretical analysis of the PDP-PMF scheme and demonstrate the privacy of the PDP-PMF scheme. In addition, we implement the probabilistic matrix factorization schemes both with traditional and with personalized differential privacy (DP-PMF, PDP-PMF) and compare them through a series of experiments. The results show that the PDP-PMF scheme performs well on protecting the privacy of each user and its recommendation quality is much better than the DP-PMF scheme.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
12/01/2022

Decentralized Matrix Factorization with Heterogeneous Differential Privacy

Conventional matrix factorization relies on centralized collection of us...
research
04/11/2023

Privacy-Preserving Matrix Factorization for Recommendation Systems using Gaussian Mechanism

Building a recommendation system involves analyzing user data, which can...
research
09/17/2023

Private Matrix Factorization with Public Item Features

We consider the problem of training private recommendation models with a...
research
02/26/2021

Private and Utility Enhanced Recommendations with Local Differential Privacy and Gaussian Mixture Model

Recommendation systems rely heavily on users behavioural and preferentia...
research
11/04/2019

Providing Input-Discriminative Protection for Local Differential Privacy

Local Differential Privacy (LDP) provides provable privacy protection fo...
research
01/02/2023

Ranking Differential Privacy

Rankings are widely collected in various real-life scenarios, leading to...
research
04/27/2023

Mean Estimation Under Heterogeneous Privacy: Some Privacy Can Be Free

Differential Privacy (DP) is a well-established framework to quantify pr...

Please sign up or login with your details

Forgot password? Click here to reset