Denoising Self-attentive Sequential Recommendation

December 08, 2022 Β· Declared Dead Β· πŸ› ACM Conference on Recommender Systems

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Authors Huiyuan Chen, Yusan Lin, Menghai Pan, Lan Wang, Chin-Chia Michael Yeh, Xiaoting Li, Yan Zheng, Fei Wang, Hao Yang arXiv ID 2212.04120 Category cs.IR: Information Retrieval Citations 72 Venue ACM Conference on Recommender Systems Last Checked 3 months ago
Abstract
Transformer-based sequential recommenders are very powerful for capturing both short-term and long-term sequential item dependencies. This is mainly attributed to their unique self-attention networks to exploit pairwise item-item interactions within the sequence. However, real-world item sequences are often noisy, which is particularly true for implicit feedback. For example, a large portion of clicks do not align well with user preferences, and many products end up with negative reviews or being returned. As such, the current user action only depends on a subset of items, not on the entire sequences. Many existing Transformer-based models use full attention distributions, which inevitably assign certain credits to irrelevant items. This may lead to sub-optimal performance if Transformers are not regularized properly.
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