4.6 Article

FeatureMF: An Item Feature Enriched Matrix Factorization Model for Item Recommendation

期刊

IEEE ACCESS
卷 9, 期 -, 页码 65266-65276

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/ACCESS.2021.3074365

关键词

Computational modeling; Feature extraction; Recommender systems; Data models; Motion pictures; Telecommunications; Social networking (online); Collaborative filtering; matrix factorization; item features; cold start; data sparsity

资金

  1. National Key Research and Development Program of China [2017YFE0135700]
  2. Bulgarian National Science Fund (BNSF) [KP-06-IP-CHINA/1]
  3. Telecommunications Research Centre (TRC), University of Limerick, Ireland

向作者/读者索取更多资源

Matrix Factorization is a successful Collaborative Filtering technique in recommender systems and incorporating item features in a single step process has been shown to significantly improve recommendation performance. The proposed model, FeatureMF, enriches item representation in MF by projecting item features into the same latent factor space with users and items, yielding the best recommendation performance across all contexts and effectively alleviating data sparsity and cold-start issues. The model is also found to scale well in terms of computational time with increasing dataset size.
Matrix Factorization (MF) is one of the most successful Collaborative Filtering (CF) techniques used in recommender systems due to its effectiveness and ability to deal with very large user-item rating matrix. However, when the rating matrix sparseness increases its performance deteriorates. Expanding MF to include side-information of users and items has been shown by many researchers both to improve general recommendation performance and to help alleviate the data-sparsity and cold-start issues in CF. In regard to item feature side-information, most schemes incorporate this information through a two stage process: intermediate results (e.g., on item similarity) are first computed based on item attributes; these are then combined with MF. In this paper, focussing on item side-information, we propose a model that directly incorporates item features into the MF framework in a single step process. The model, which we name FeatureMF, does this by projecting every available attribute datum in each of the item features into the same latent factor space with users and items, thereby in effect enriching item representation in MF. Results are presented of comparative performance experiments of the model against three state-of-the-art item information enriched models, as well as against four reference benchmark models, using two public real-world datasets, Douban and Yelp, with four training:test ratio scenarios each. It is shown to yield the best recommendation performance over all these models across all contexts including data-sparsity situations, in particular, achieving over 0.9% to over 6.5% MAE recommendation performance improvement over the next best model, HERec. FeatureMF is also found to alleviate cold start and to scale well, almost linearly, in regard to computational time, as a function of dataset size.

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