Visible to the public A Novel Trust-based Model for Collaborative Filtering Recommendation Systems using Entropy

TitleA Novel Trust-based Model for Collaborative Filtering Recommendation Systems using Entropy
Publication TypeConference Paper
Year of Publication2021
AuthorsChen, Lei, Yuan, Yuyu, Jiang, Hongpu, Guo, Ting, Zhao, Pengqian, Shi, Jinsheng
Conference Name2021 8th International Conference on Dependable Systems and Their Applications (DSA)
Keywordscollaborative filtering, Computational modeling, electronic commerce, Entropy, entropy weight method, false trust, History, KNN, Measurement, policy-based governance, Predictive models, pubcrawl, recommender systems, resilience, Resiliency, Scalability, similarity, trust model
AbstractWith the proliferation of false redundant information on various e-commerce platforms, ineffective recommendations and other untrustworthy behaviors have seriously hindered the healthy development of e-commerce platforms. Modern recommendation systems often use side information to alleviate these problems and also increase prediction accuracy. One such piece of side information, which has been widely investigated, is trust. However, it is difficult to obtain explicit trust relationship data, so researchers infer trust values from other methods, such as the user-to-item relationship. In this paper, addressing the problems, we proposed a novel trust-based recommender model called UITrust, which uses user-item relationship value to improve prediction accuracy. With the improvement the traditional similarity measures by employing the entropies of user and item history ratings to reflect the global rating behavior on both. We evaluate the proposed model using two real-world datasets. The proposed model performs significantly better than the baseline methods. Also, we can use the UITrust to alleviate the sparsity problem associated with correlation-based similarity. In addition to that, the proposed model has a better computational complexity for making predictions than the k-nearest neighbor (kNN) method.
DOI10.1109/DSA52907.2021.00028
Citation Keychen_novel_2021