On Deep Learning for Trust-Aware Recommendations in Social Networks 论文

2016IEEE Transactions on Neural Networks and Learning Systems引用 311
Recommender Systems and TechniquesAdvanced Graph Neural NetworksExpert finding and Q&A systems

详细信息

发表期刊/会议
IEEE Transactions on Neural Networks and Learning Systems
发表日期
2016-02-19
发表年份
2016

关键词

Recommender Systems and TechniquesAdvanced Graph Neural NetworksExpert finding and Q&A systems

摘要

With the emergence of online social networks, the social network-based recommendation approach is popularly used. The major benefit of this approach is the ability of dealing with the problems with cold-start users. In addition to social networks, user trust information also plays an important role to obtain reliable recommendations. Although matrix factorization (MF) becomes dominant in recommender systems, the recommendation largely relies on the initialization of the user and item latent feature vectors. Aiming at addressing these challenges, we develop a novel trust-based approach for recommendation in social networks. In particular, we attempt to leverage deep learning to determinate the initialization in MF for trust-aware social recommendations and to differentiate the community effect in user's trusted friendships. A two-phase recommendation process is proposed to utilize deep learning in initialization and to synthesize the users' interests and their trusted friends' interests together with the impact of community effect for recommendations. We perform extensive experiments on real-world social network data to demonstrate the accuracy and effectiveness of our proposed approach in comparison with other state-of-the-art methods.