Temporal Diversity-Aware Micro-Video Recommendation with Long- and Short-Term Interests Modeling
Pan Gu,
Haiyang Hu,
Dongjing Wang
et al.
Abstract:Recommender systems have become indispensable for addressing information overload for micro-video services. They are used to characterize users’ preferences from their historical interactions and recommend micro-videos accordingly. Existing works largely leverage the multi-modal contents of micro-videos to enhance recommendation performance. However, limited efforts have been made to understand users’ complex behavior patterns, including their long- and short-term interests, as well as their temporal diversity… Show more
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