Designing a trust-based recommender system in Social Rating Networks
Authors
Abstract:
One of the most common styles of business today is electronic business, since it is considered as a principal mean for financial transactions among advanced countries. In view of the fact that due to the evolution of human knowledge and the increase of expectations following that, traditional marketing in electronic business cannot meet current generation’s needs, in order to survive, organizations have to correct and even change their advertising strategies along with changes, truth and behaviors of their customers. In order for this and considering unique characteristics of social networks in achieving and evaluating customer’s behavior, there will a chance for the organization to reach its goals through performing such a business within social networks.In this article, a trust-based recommender system in Social Rating Networks (SRN) is designed in order to recommend an article to the user through receiving user ID and evaluation of related characteristics. A big real data set, Epinions, is used in database of this system. According to the evaluation performed in this system, 99.01% of users studied the articles recommended by system and an average percent of the ratio of articles studied by each test sample to recommended articles is 87.57%.
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Journal title
volume 10 issue 2
pages 1- 15
publication date 2019-05-01
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