Integrating Item Relevance in Training Loss for Sequential Recommender Systems

05/18/2023
by   Andrea Bacciu, et al.
15

Sequential Recommender Systems (SRSs) are a popular type of recommender system that learns from a user's history to predict the next item they are likely to interact with. However, user interactions can be affected by noise stemming from account sharing, inconsistent preferences, or accidental clicks. To address this issue, we (i) propose a new evaluation protocol that takes multiple future items into account and (ii) introduce a novel relevance-aware loss function to train a SRS with multiple future items to make it more robust to noise. Our relevance-aware models obtain an improvement of  1.2 and 0.88 protocol, the improvement is  1.63 performing models.

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