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A Clustering-Based User Reputation Evaluation Approach for Web Service Recommendation

机译:基于集群的Web服务推荐用户信誉评估方法

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In web service recommender systems, users are always asked to provide their observed QoS data to assist the personalized QoS prediction for other users. Most existed approaches assume that all the users will provide real data to the system, however the dishonest users may be appeared in many recommender systems. Attracted by commercial benefit, some users may intentionally provide unfair feedback inconsistent with their real experience, which will harm to the robustness of service recommender system. In this paper, we propose a clustering-based reputation evaluation approach to identify the dishonest users. Firstly, we calculate the trustworthy cluster on each service by Clustering of users' QoS feedback. Then the feedback of users will be classified according to their deviation degree from the trustworthy cluster. Finally, according to the users' statistic feedback information, we apply Beta reputation model to evaluate users' reputation dynamically. Experimental results demonstrate that this approach can accurately evaluate users' reputaion compared to other state-of-the-art approaches.
机译:在Web服务推荐系统中,始终要求用户提供观察到的QoS数据以帮助对其他用户的个性化QoS预测。最具存在的方法假设所有用户都将为系统提供真实数据,但是可以在许多推荐系统中出现不诚实的用户。由商业福利引起,有些用户可能会故意提供不公平的反馈与其真实经验不一致,这将危害服务推荐系统的稳健性。在本文中,我们提出了一种基于聚类的信誉评估方法来识别不诚实的用户。首先,我们通过群集用户QoS反馈来计算每个服务的可信赖群集。然后,用户的反馈将根据其值得信赖的群集的偏差程度进行分类。最后,根据用户的统计反馈信息,我们应用Beta声誉模型动态评估用户的声誉。实验结果表明,与其他最先进的方法相比,这种方法可以准确地评估用户的重新安排。

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