Cross-Domain Latent Factors Sharing via Implicit Matrix Factorization
Author(s)
Samra, Abdulaziz; Frolov, Evgeny; Vasilev, Alexey; Grigorevskiy, Alexander; Vakhrushev, Anton
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Show full item recordAbstract
Data sparsity has been one of the long-standing problems for recommender systems. One of the solutions to mitigate this issue is to exploit knowledge available in other source domains. However, many cross-domain recommender systems introduce a complex architecture that makes them less scalable in practice. On the other hand, matrix factorization methods are still considered to be strong baselines for single-domain recommendations. In this paper, we introduce the CDIMF, a model that extends the standard implicit matrix factorization with ALS to cross-domain scenarios. We apply the Alternating Direction Method of Multipliers to learn shared latent factors for overlapped users while factorizing the interaction matrix. In a dual-domain setting, experiments on industrial datasets demonstrate a competing performance of CDIMF for both cold-start and warm-start. The proposed model can outperform most other recent cross-domain and single-domain models. We also provide the code to reproduce experiments on GitHub.
Description
RecSys ’24, October 14–18, 2024, Bari, Italy
Date issued
2024-10-08Publisher
ACM|18th ACM Conference on Recommender Systems
Citation
Samra, Abdulaziz, Frolov, Evgeny, Vasilev, Alexey, Grigorevskiy, Alexander and Vakhrushev, Anton. 2024. "Cross-Domain Latent Factors Sharing via Implicit Matrix Factorization."
Version: Final published version
ISBN
979-8-4007-0505-2