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arxiv: 2404.13808 · v1 · pith:RB56AYV7new · submitted 2024-04-22 · 💻 cs.IR · cs.LG· cs.MM

General Item Representation Learning for Cold-start Content Recommendations

classification 💻 cs.IR cs.LGcs.MM
keywords cold-startitemlearningrecommendationrepresentationapproachrecommendationsvarious
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Cold-start item recommendation is a long-standing challenge in recommendation systems. A common remedy is to use a content-based approach, but rich information from raw contents in various forms has not been fully utilized. In this paper, we propose a domain/data-agnostic item representation learning framework for cold-start recommendations, naturally equipped with multimodal alignment among various features by adopting a Transformer-based architecture. Our proposed model is end-to-end trainable completely free from classification labels, not just costly to collect but suboptimal for recommendation-purpose representation learning. From extensive experiments on real-world movie and news recommendation benchmarks, we verify that our approach better preserves fine-grained user taste than state-of-the-art baselines, universally applicable to multiple domains at large scale.

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