4.6 Article

Enhancing neural collaborative filtering using hybrid feature selection for recommendation

期刊

PEERJ COMPUTER SCIENCE
卷 9, 期 -, 页码 -

出版社

PEERJ INC
DOI: 10.7717/peerj-cs.1456

关键词

Recommender systems; Outer product; Convolutions; Embedding; Collaborative filtering

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In the past decade, there has been significant growth in online transactions. As a result, many professionals and researchers have turned to deep learning models to design and develop recommender systems for online personal services. However, existing approaches often fail to accurately represent the correlation between users and items. Therefore, this article proposes a deep collaborative recommendation system based on a convolutional neural network, which incorporates an outer product matrix and a hybrid feature selection module to capture both local and global higher-order interactions.
The past decade has seen substantial growth in online transactions. Accordingly, many professionals and researchers utilize deep learning models to design and develop recommender systems to suit the needs of online personal services. These systems can model the interactions between users and items. However, existing approaches focus on either modeling global or local item correlation and rarely consider both cases, thus failing to represent user-item correlation very well. Therefore, this article proposes a deep collaborative recommendation system based on a convolutional neural network with an outer product matrix and a hybrid feature selection module to capture local and global higher-order interaction between users and items. Moreover, we incorporated the weights of generalized matrix factorization to optimize the overall network performance and prevent overfitting. Finally, we conducted extensive experiments on two real-world datasets with different sparsity to confirm that our proposed approach outperforms the baseline methods we have used in the experiment.

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