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Sequential Recommendation via Stochastic Self-Attention
[article]
2022
arXiv
pre-print
Sequential recommendation models the dynamics of a user's previous behaviors in order to forecast the next item, and has drawn a lot of attention. Transformer-based approaches, which embed items as vectors and use dot-product self-attention to measure the relationship between items, demonstrate superior capabilities among existing sequential methods. However, users' real-world sequential behaviors are uncertain rather than deterministic, posing a significant challenge to present techniques. We
arXiv:2201.06035v2
fatcat:h27uaasfzjf2ngb4sy2d36rs5e