Visible to the public DeepTrust: A Deep User Model of Homophily Effect for Trust Prediction

TitleDeepTrust: A Deep User Model of Homophily Effect for Trust Prediction
Publication TypeConference Paper
Year of Publication2019
AuthorsWang, Q., Zhao, W., Yang, J., Wu, J., Hu, W., Xing, Q.
Conference Name2019 IEEE International Conference on Data Mining (ICDM)
Date PublishedNov. 2019
PublisherIEEE
ISBN Number978-1-7281-4604-1
KeywordsComputing Theory, data sparsity insensitive model, decision making, deep user model, DeepTrust, economic networks, Human Behavior, human factors, information dissemination, neural nets, online social networks, pair-wise deep neural network, product promotion, pubcrawl, social networking (online), Trust, trust network, trust prediction, Trusted Computing, user feature vector cosine similarity, user modeling, user review behavior, user similarity measurement
Abstract

Trust prediction in online social networks is crucial for information dissemination, product promotion, and decision making. Existing work on trust prediction mainly utilizes the network structure or the low-rank approximation of a trust network. These approaches can suffer from the problem of data sparsity and prediction accuracy. Inspired by the homophily theory, which shows a pervasive feature of social and economic networks that trust relations tend to be developed among similar people, we propose a novel deep user model for trust prediction based on user similarity measurement. It is a comprehensive data sparsity insensitive model that combines a user review behavior and the item characteristics that this user is interested in. With this user model, we firstly generate a user's latent features mined from user review behavior and the item properties that the user cares. Then we develop a pair-wise deep neural network to further learn and represent these user features. Finally, we measure the trust relations between a pair of people by calculating the user feature vector cosine similarity. Extensive experiments are conducted on two real-world datasets, which demonstrate the superior performance of the proposed approach over the representative baseline works.

URLhttps://ieeexplore.ieee.org/document/8970846
DOI10.1109/ICDM.2019.00072
Citation Keywang_deeptrust_2019