Multi-Modal Recommendation Unlearning for Legal, Licensing, and Modality Constraints
Yash Sinha, Murari Mandal, Mohan Kankanhalli

TL;DR
This paper introduces MMRecUn, a novel method for unlearning item data in multi-modal recommender systems, effectively removing outdated or sensitive user interactions while maintaining high recommendation performance and efficiency.
Contribution
It presents the first approach for unlearning in MMRS using a reverse BPR objective, addressing limitations of previous methods and improving unlearning effectiveness and speed.
Findings
Outperforms baseline methods in unlearning accuracy.
Achieves up to 49.85% recall improvement.
Runs up to 1.3x faster than retraining from scratch.
Abstract
User data spread across multiple modalities has popularized multi-modal recommender systems (MMRS). They recommend diverse content such as products, social media posts, TikTok reels, etc., based on a user-item interaction graph. With rising data privacy demands, recent methods propose unlearning private user data from uni-modal recommender systems (RS). However, methods for unlearning item data related to outdated user preferences, revoked licenses, and legally requested removals are still largely unexplored. Previous RS unlearning methods are unsuitable for MMRS due to the incompatibility of their matrix-based representation with the multi-modal user-item interaction graph. Moreover, their data partitioning step degrades performance on each shard due to poor data heterogeneity and requires costly performance aggregation across shards. This paper introduces MMRecUn, the first…
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Taxonomy
TopicsIntelligent Tutoring Systems and Adaptive Learning · Recommender Systems and Techniques · Text and Document Classification Technologies
MethodsSparse Evolutionary Training
