Modern recommender systems follow the guiding principle of serving the right user, the right item at the right time. One of their main limitations is that they are typically limited to items already in the catalog. We propose REcommendations BEyond CAtalogs, REBECA, a new class of probabilistic diffusion-based recommender systems that synthesize new items tailored to individual tastes rather than retrieve items from the catalog. REBECA combines efficient training in embedding space with a novel diffusion prior that only requires users' past ratings of items. We evaluate REBECA on real-world data and propose novel personalization metrics for generative recommender systems. Extensive experiments demonstrate that REBECA produces high-quality, personalized recommendations, generating images that align with users' unique preferences.
View on arXiv@article{patron2025_2502.18477, title={ Recommendations Beyond Catalogs: Diffusion Models for Personalized Generation }, author={ Gabriel Patron and Zhiwei Xu and Ishan Kapnadak and Felipe Maia Polo }, journal={arXiv preprint arXiv:2502.18477}, year={ 2025 } }