Title
User preference modeling based on meta paths and diversity regularization in heterogeneous information networks
Abstract
Recommendation methods based on heterogeneous information networks (HINs) have been attracting increased attention recently. Meta paths in HINs represent different types of semantic relationships. Meta path-based recommendation methods aim to use meta paths in HINs to evaluate the similarity or relevancy between nodes to make recommendations. In previous work, the meta paths have usually been selected manually (based on experience), and the path weight optimization methods usually suffer from overfitting. To solve these problems, we propose to automatically select and combine the meta paths through weight optimization. Diversity is introduced into the objective function as a regularization term to avoid overfitting. Inspired by the ambiguity decomposition theory in ensemble learning, we present a new diversity measure and use it to encourage diversity among meta paths to improve recommendation performance. Experimental results on item recommendation and tag recommendation tasks confirm the effectiveness of the proposed method compared with traditional collaborative filtering and state-of-the-art HIN-based recommendation methods.
Year
DOI
Venue
2019
10.1016/j.knosys.2019.05.027
Knowledge-Based Systems
Keywords
Field
DocType
Recommender systems,Heterogeneous information network,Ensemble learning,Meta path,User preference
Data mining,Information networks,Collaborative filtering,Diversity measure,Computer science,Regularization (mathematics),Artificial intelligence,Overfitting,Ensemble learning,Ambiguity,Machine learning
Journal
Volume
ISSN
Citations 
181
0950-7051
2
PageRank 
References 
Authors
0.38
0
5
Name
Order
Citations
PageRank
Hongzhi Liu18814.92
Zhengshen Jiang2121.96
Yang Song341.08
Tao Zhang422069.03
Zhonghai Wu53412.36