Title
Deep Collaborative Filtering with Multi-Aspect Information in Heterogeneous Networks
Abstract
AbstractRecently, recommender systems play a pivotal role in alleviating the problem of information overload. Latent factor models have been widely used for recommendation. Most existing latent factor models mainly utilize the interaction information between users and items, although some recently extended models utilize some auxiliary information to learn a unified latent factor for users and items. The unified latent factor only represents the characteristics of users and the properties of items from the aspect of purchase history. However, the characteristics of users and the properties of items may stem from different aspects, e.g., the brand-aspect and category-aspect of items. Moreover, the latent factor models usually use the shallow projection, which cannot capture the characteristics of users and items well. Deep neural network has shown tremendous potential to model the non-linearity relationship between users and items. It can be used to replace shallow projection to model the complex correlation between users and items. In this paper, we propose a Neural network based Aspect-level Collaborative Filtering model (NeuACF) to exploit different aspect latent factors. Through modelling the rich object properties and relations in recommender system as a heterogeneous information network, NeuACF first extracts different aspect-level similarity matrices of users and items, respectively, through different meta-paths, and then feeds an elaborately designed deep neural network with these matrices to learn aspect-level latent factors. Finally, the aspect-level latent factors are fused for the top-N recommendation. Moreover, to fuse information from different aspects more effectively, we further propose NeuACF++ to fuse aspect-level latent factors with self-attention mechanism. Extensive experiments on three real world datasets show that NeuACF and NeuACF++ significantly outperform both existing latent factor models and recent neural network models.
Year
DOI
Venue
2021
10.1109/TKDE.2019.2941938
Periodicals
Keywords
DocType
Volume
Neural networks, Feature extraction, Fuses, Recommender systems, Collaboration, Data mining, Recommender systems, heterogeneous information network, aspect-level latent factor
Journal
33
Issue
ISSN
Citations 
4
1041-4347
6
PageRank 
References 
Authors
0.57
0
7
Name
Order
Citations
PageRank
Senzhang Wang128928.82
Xiaotian Han260.90
Li Song361.92
Xiao Wang444529.80
Senzhang Wang5218.31
Junping Du678991.80
Philip S. Yu7306703474.16