Multi-task Item-attribute Graph Pre-training for Strict Cold-start Item Recommendation
Yuwei Cao, Liangwei Yang, Chen Wang, Zhiwei Liu, Hao Peng, Chenyu You,, Philip S. Yu

TL;DR
ColdGPT introduces a multi-task pre-training framework that leverages fine-grained item attributes and multiple data sources to significantly improve strict cold-start item recommendation performance.
Contribution
The paper proposes ColdGPT, a novel multi-task pre-training approach that models item-attribute correlations and transfers knowledge from diverse data sources for better cold-start recommendations.
Findings
Outperforms existing SCS recommenders by large margins
Surpasses models pre-trained on much larger datasets on two datasets
Effectively utilizes item contents, purchase sequences, and review texts
Abstract
Recommendation systems suffer in the strict cold-start (SCS) scenario, where the user-item interactions are entirely unavailable. The ID-based approaches completely fail to work. Cold-start recommenders, on the other hand, leverage item contents to map the new items to the existing ones. However, the existing SCS recommenders explore item contents in coarse-grained manners that introduce noise or information loss. Moreover, informative data sources other than item contents, such as users' purchase sequences and review texts, are ignored. We explore the role of the fine-grained item attributes in bridging the gaps between the existing and the SCS items and pre-train a knowledgeable item-attribute graph for SCS item recommendation. Our proposed framework, ColdGPT, models item-attribute correlations into an item-attribute graph by extracting fine-grained attributes from item contents.…
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Taxonomy
TopicsRecommender Systems and Techniques · Topic Modeling · Domain Adaptation and Few-Shot Learning
Methodsfail
