English

Sparse Contrastive Learning for Content-Based Cold Item Recommendation

Information Retrieval 2026-04-15 v1

Abstract

Item cold-start is a pervasive challenge for collaborative filtering (CF) recommender systems. Existing methods often train cold-start models by mapping auxiliary item content, such as images or text descriptions, into the embedding space of a CF model. However, such approaches can be limited by the fundamental information gap between CF signals and content features. In this work, we propose to avoid this limitation with purely content-based modeling of cold items, i.e. without alignment with CF user or item embeddings. We instead frame cold-start prediction in terms of item-item similarity, training a content encoder to project into a latent space where similarity correlates with user preferences. We define our training objective as a sparse generalization of sampled softmax loss with the α\alpha-entmax family of activation functions, which allows for sharper estimation of item relevance by zeroing gradients for uninformative negatives. We then describe how this Sampled Entmax for Cold-start (SEMCo) training regime can be extended via knowledge distillation, and show that it outperforms existing cold-start methods and standard sampled softmax in ranking accuracy. We also discuss the advantages of purely content-based modeling, particularly in terms of equity of item outcomes.

Keywords

Cite

@article{arxiv.2604.12990,
  title  = {Sparse Contrastive Learning for Content-Based Cold Item Recommendation},
  author = {Gregor Meehan and Johan Pauwels},
  journal= {arXiv preprint arXiv:2604.12990},
  year   = {2026}
}

Comments

Accepted at SIGIR 2026

R2 v1 2026-07-01T12:09:16.488Z