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On the Effectiveness of Unlearning in Session-Based Recommendation

Xin Xin, Liu Yang, Ziqi Zhao, Pengjie Ren, Zhumin Chen, Jun Ma, Zhaochun Ren

202414 citationsDOIOpen Access PDF

Abstract

Session-based recommendation predicts users' future interests from previous interactions in a session. Despite the memorizing of historical samples, the request of unlearning, i.e., to remove the effect of certain training samples, also occurs for reasons such as user privacy or model fidelity. However, existing studies on unlearning are not tailored for the session-based recommendation. On the one hand, these approaches cannot achieve satisfying unlearning effects due to the collaborative correlations and sequential connections between the unlearning item and the remaining items in the session. On the other hand, seldom work has conducted the research to verify the unlearning effectiveness in the session-based recommendation scenario.

Topics & Concepts

Session (web analytics)Computer scienceBenchmark (surveying)Metric (unit)Similarity (geometry)Information retrievalArtificial intelligenceWorld Wide WebOperations managementImage (mathematics)GeographyGeodesyEconomicsRecommender Systems and TechniquesPrivacy-Preserving Technologies in DataAdvanced Bandit Algorithms Research
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