AI RESEARCH

A Gated Hybrid Contrastive Collaborative Filtering Recommendation

arXiv CS.AI

ArXi:2604.27117v1 Announce Type: cross Recommender systems increasingly incorporate textual reviews to enrich user and item representations. However, most review-aware models remain optimized for rating prediction rather than ranking quality. This misalignment limits their effectiveness in top-N recommendation scenarios, where discriminative ranking is essential. To address this gap, we propose a Gated Hybrid Collaborative Filtering framework that integrates review-derived representations into an autoencoder-based collaborative model.