JOURNAL ARTICLE

Multi-Item-Query Attention for Stable Sequential Recommendation

Abstract

The inherent instability and noise in user interaction data challenge sequential recommendation systems. Prevailing masked attention models, relying on a single query from the most recent item, are sensitive to this noise, reducing prediction reliability. We propose the Multi-Item-Query attention mechanism (MIQ-Attn) to enhance model stability and accuracy. MIQ-Attn constructs multiple diverse query vectors from user interactions, effectively mitigating noise and improving consistency. It is designed for easy adoption as a drop-in replacement for existing single-query attention. Experiments show MIQ-Attn significantly improves performance on benchmark datasets.

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Journal:   Proceedings of the 31st ACM International Conference on Information & Knowledge Management Year: 2022 Pages: 4019-4023
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