2022
DOI: 10.48550/arxiv.2211.01297
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Self-Attentive Sequential Recommendation with Cheap Causal Convolutions

Abstract: Sequential Recommendation is a prominent topic in current research, which uses user behavior sequence as an input to predict future behavior. By assessing the correlation strength of historical behavior through the dot product, the model based on the self-attention mechanism can capture the long-term preference of the sequence. However, it has two limitations. On the one hand, it does not effectively utilize the items' local context information when determining the attention and creating the sequence represent… Show more

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