English

MARec: Metadata Alignment for cold-start Recommendation

Information Retrieval 2024-12-12 v3 Systems and Control Systems and Control

Abstract

For many recommender systems, the primary data source is a historical record of user clicks. The associated click matrix is often very sparse, as the number of users x products can be far larger than the number of clicks. Such sparsity is accentuated in cold-start settings, which makes the efficient use of metadata information of paramount importance. In this work, we propose a simple approach to address cold-start recommendations by leveraging content metadata, Metadata Alignment for cold-start Recommendation. We show that this approach can readily augment existing matrix factorization and autoencoder approaches, enabling a smooth transition to top performing algorithms in warmer set-ups. Our experimental results indicate three separate contributions: first, we show that our proposed framework largely beats SOTA results on 4 cold-start datasets with different sparsity and scale characteristics, with gains ranging from +8.4% to +53.8% on reported ranking metrics; second, we provide an ablation study on the utility of semantic features, and proves the additional gain obtained by leveraging such features ranges between +46.8% and +105.5%; and third, our approach is by construction highly competitive in warm set-ups, and we propose a closed-form solution outperformed by SOTA results by only 0.8% on average.

Keywords

Cite

@article{arxiv.2404.13298,
  title  = {MARec: Metadata Alignment for cold-start Recommendation},
  author = {Julien Monteil and Volodymyr Vaskovych and Wentao Lu and Anirban Majumder and Anton van den Hengel},
  journal= {arXiv preprint arXiv:2404.13298},
  year   = {2024}
}
R2 v1 2026-06-28T16:00:35.396Z