利用人气提高社交网络中推荐系统的准确性

Kasra Majbouri Yazdi, Adel Majbouri Yazdi, Saeid Khodayi, Jingyu Hou, Wanlei Zhou, Saeid Saedy, M. Rostami
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引用次数: 5

摘要

随着万维网的迅速发展,人们可以通过在线工具,如共享系统和电子商务应用程序,分享他们的知识和信息。人们提出了许多处理和组织信息的方法。推荐系统是此类工具在提供个性化建议方面的成功范例。推荐系统的主要目的是在许多其他选项(例如音乐,电影,书籍,新闻等)中识别和介绍用户想要的项目。我们提出的方法的目标是提供一个基于社交网络中信息扩散和流行度的推荐系统。通过添加流行度、相似度和用户信任,提出了一个更高效的系统。该方法较好地解决了以往方法在预测精度和覆盖范围等方面存在的问题和缺陷。在MovieLens和Epinions数据集上的模拟评估表明,与其他方法相比,该方法提供了更准确的推荐。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving Recommender Systems Accuracy in Social Networks Using Popularity
With the rapid advancement of World Wide Web, people can share their knowledge and information via online tools such as sharing systems and ecommerce applications. Many approaches have been proposed to process and organize information. Recommender systems are good successful examples of such tools in providing personalized suggestions. The main purpose of a recommender system is to identify and introduce desired items of a user among many other options (e.g. music, movies, books, news and etc). The goal of our proposed method is to provide a recommender system based on information diffusion and popularity in social networks. By adding popularity, similarity and users' trusts a more efficient system is proposed. This approach makes an improvement in tackling the issues and defects of the previous methods such as prediction accuracy and coverage. The evaluation of the simulated proposed method on MovieLens and Epinions datasets shows that it provides more accurate recommendations in comparison to other approaches.
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