4.6 Article

A Cross-Domain Recommendation Mechanism for Cold-Start Users Based on Partial Least Squares Regression

出版社

ASSOC COMPUTING MACHINERY
DOI: 10.1145/3231601

关键词

Cross-domain recommendation; cold start; partial least square regression; transfer learning

资金

  1. Ministry of Science and Technology of Taiwan (MOST) [107-2636-E-006-002, 106-3114-E-006-002, 106-3114-E-001-004]
  2. Academia Sinica [AS-107-TP-A05]

向作者/读者索取更多资源

Recommender systems are common in e-commerce platforms in recent years. Recommender systems are able to help users find preferential items among a large amount of products so that users' time is saved and sellers' profits are increased. Cross-domain recommender systems aim to recommend items based on users' different tastes across domains. While recommender systems usually suffer from the user cold-start problem that leads to unsatisfying recommendation performance, cross-domain recommendation can remedy such a problem. This article proposes a novel cross-domain recommendation model based on regression analysis, partial least squares regression (PLSR). The proposed recommendation models, PLSR-CrossRec and PLSR-Latent, are able to purely use source-domain ratings to predict the ratings for cold-start users who never rated items in the target domains. Experiments conducted on the Epinions dataset with ten various domains' rating records demonstrate that PLSR-Latent can outperform several matrix factorization-based competing methods under a variety of cross-domain settings. The time efficiency of PLSR-Latent is also satisfactory.

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