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A social recommendation method based on an adaptive neighbor selection mechanism

机译:基于自适应邻居选择机制的社会推荐方法

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Recommender systems are techniques to make personalized recommendations of items to users. In e-commerce sites and online sharing communities, providing high quality recommendations is an important issue which can help the users to make effective decisions to select a set of items. Collaborative filtering is an important type of the recommender systems that produces user specific recommendations of the items based on the patterns of ratings or usage (e.g. purchases). However, the quality of predicted ratings and neighbor selection for the users are important problems in the recommender systems. Selecting suitable neighbors set for the users leads to improve the accuracy of ratings prediction in recommendation process. In this paper, a novel social recommendation method is proposed which is based on an adaptive neighbor selection mechanism. In the proposed method first of all, initial neighbors set of the users is calculated using clustering algorithm. In this step, the combination of historical ratings and social information between the users are used to form initial neighbors set for the users. Then, these neighbor sets are used to predict initial ratings of the unseen items. Moreover, the quality of the initial predicted ratings is evaluated using a reliability measure which is based on the historical ratings and social information between the users. Then, a confidence model is proposed to remove useless users from the initial neighbors of the users and form a new adapted neighbors set for the users. Finally, new ratings of the unseen items are predicted using the new adapted neighbors set of the users and thetop_Ninterested items are recommended to the active user. Experimental results on three real-world datasets show that the proposed method significantly outperforms several state-of-the-art recommendation methods.
机译:推荐系统是向用户做出个性化商品推荐的技术。在电子商务站点和在线共享社区中,提供高质量的建议是一个重要问题,可以帮助用户做出有效的决定来选择一组项目。协作过滤是推荐系统的重要类型,可根据评分或使用方式(例如购买)生成用户对项目的特定推荐。但是,对于用户来说,预测收视率的质量和邻居选择是推荐系统中的重要问题。为用户选择合适的邻居集可以提高推荐过程中收视率预测的准确性。本文提出了一种基于自适应邻居选择机制的新型社会推荐方法。在所提出的方法中,首先,使用聚类算法来计算用户的初始邻居集。在此步骤中,用户之间的历史评级和社会信息的组合用于形成为用户设置的初始邻居。然后,这些邻居集用于预测未看到项目的初始评级。此外,使用基于历史等级和用户之间的社会信息的可靠性度量来评估初始预测等级的质量。然后,提出一种置信度模型,以从用户的初始邻居中删除无用的用户,并为用户形成一个新的适应性邻居集。最后,使用用户的新适应邻居集来预测未见项目的新评级,并向活动用户推荐top_N感兴趣的项目。在三个真实数据集上的实验结果表明,该方法明显优于几种最新的推荐方法。

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