Preference Aware Dual Contrastive Learning for Item Cold-Start Recommendation
Wenbo Wang,
Bingquan Liu,
Lili Shan
et al.
Abstract:Existing cold-start recommendation methods often adopt item-level alignment strategies to align the content feature and the collaborative feature of warm items for model training, however, cold items in the test stage have no historical interactions with users to obtain the collaborative feature. These existing models ignore the aforementioned condition of cold items in the training stage, resulting in the performance limitation. In this paper, we propose a preference aware dual contrastive learning based reco… Show more
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