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Unifying user similarity and social trust to generate powerful recommendations for smart cities using collaborating filtering-based recommender systems

机译:统一用户相似性和社交信任,使用基于合作的筛选推荐系统为智能城市生成强大的建议

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摘要

Recommender systems can improve the quality of life in smart cities by presenting personalized services to the community. Such systems maintain a database of user profiles for producing recommendations for a specific user. The collaborative filtering (CF) approach used in these systems has become a benchmark approach for generating recommendations for interested users because it can provide "out of the box" solutions. These CF-based approaches first construct a user-item rating matrix and then exploit similarity methods. These approaches suffer from scalability, sparsity, and cold user conditions, which consequently result in the poor recommendation accuracy of these systems. To enhance the accuracy of recommender systems, social trust can play a vital role because people tend to interact with a system or respond positively to recommendations that originate from their social trustworthy friends. The proposed unified approach of this article uses explicit trust, implicit trust, and user preference similarity to create a unified rating profile for the target user to produce more powerful and accurate recommendations. The proposed unified approach also enhances the recommendation performance of CF-based recommender systems when only a limited set of ratings is available. Experiments are performed on three publicly available datasets which are FilmTrust, CiaoDVD, and Epinions. Comparison of obtained results is made with traditional similarity measures as well as up-to-date trust-based approaches. The results show that the proposed unified approach is superior to existing approaches in terms of both predictive and classification-based accuracy measures.
机译:通过向社区展示个性化服务,推荐系统可以提高智能城市的生活质量。这种系统维护用户配置文件的数据库,用于为特定用户生成建议。这些系统中使用的协同过滤(CF)方法已成为为感兴趣的用户提供建议的基准方法,因为它可以提供“开箱即用”解决方案。基于CF的方法首先构建用户项目评级矩阵,然后利用相似性方法。这些方法遭受可伸缩性,稀疏性和冷的用户条件,从而导致这些系统的差的推荐准确性。为了提高推荐者系统的准确性,社会信任可以发挥至关重要的作用,因为人们倾向于与系统互动或积极响应来自他们的社会信任朋友的建议。本文所提出的统一方法使用显式信任,隐式信任和用户偏好相似度,以为目标用户创建统一的评级配置文件,以产生更强大和准确的建议。拟议的统一方法还提高了基于CF的推荐系统的推荐绩效,只有有限的一系列评级。实验是在三个公共数据集上进行的,这些数据集是薄膜牌子,Ciaodvd和渗透物。获得结果的比较采用传统的相似措施以及基于最新的基于信任的方法。结果表明,拟议的统一方法优于现有的基于预测和分类的准确措施。

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