Making Recommender Systems Forget: Learning and Unlearning for Erasable Recommendation

03/22/2022
by   Yuyuan Li, et al.
0

Privacy laws and regulations enforce data-driven systems, e.g., recommender systems, to erase the data that concern individuals. As machine learning models potentially memorize the training data, data erasure should also unlearn the data lineage in models, which raises increasing interest in the problem of Machine Unlearning (MU). However, existing MU methods cannot be directly applied into recommendation. The basic idea of most recommender systems is collaborative filtering, but existing MU methods ignore the collaborative information across users and items. In this paper, we propose a general erasable recommendation framework, namely LASER, which consists of Group module and SeqTrain module. Firstly, Group module partitions users into balanced groups based on their similarity of collaborative embedding learned via hypergraph. Then SeqTrain module trains the model sequentially on all groups with curriculum learning. Both theoretical analysis and experiments on two real-world datasets demonstrate that LASER can not only achieve efficient unlearning, but also outperform the state-of-the-art unlearning framework in terms of model utility.

READ FULL TEXT
research
01/18/2022

Recommendation Unlearning

Recommender systems provide essential web services by learning users' pe...
research
08/14/2022

Forgetting Fast in Recommender Systems

Users of a recommender system may want part of their data being deleted,...
research
10/04/2010

Local Optimality of User Choices and Collaborative Competitive Filtering

While a user's preference is directly reflected in the interactive choic...
research
06/14/2021

Efficient Data-specific Model Search for Collaborative Filtering

Collaborative filtering (CF), as a fundamental approach for recommender ...
research
04/20/2023

Selective and Collaborative Influence Function for Efficient Recommendation Unlearning

Recent regulations on the Right to be Forgotten have greatly influenced ...
research
08/20/2019

Hierarchical Bayesian Personalized Recommendation: A Case Study and Beyond

Items in modern recommender systems are often organized in hierarchical ...
research
07/29/2023

Recommendation Unlearning via Matrix Correction

Recommender systems are important for providing personalized services to...

Please sign up or login with your details

Forgot password? Click here to reset