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A Personalized QoS Prediction Approach for CPS Service Recommendation Based on Reputation and Location-Aware Collaborative Filtering

机译:基于信誉和位置感知协同过滤的CPS服务推荐个性化QoS预测方法

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摘要

With the rapid development of cyber-physical systems (CPS), building cyber-physical systems with high quality of service (QoS) has become an urgent requirement in both academia and industry. During the procedure of building Cyber-physical systems, it has been found that a large number of functionally equivalent services exist, so it becomes an urgent task to recommend suitable services from the large number of services available in CPS. However, since it is time-consuming, and even impractical, for a single user to invoke all of the services in CPS to experience their QoS, a robust QoS prediction method is needed to predict unknown QoS values. A commonly used method in QoS prediction is collaborative filtering, however, it is hard to deal with the data sparsity and cold start problem, and meanwhile most of the existing methods ignore the data credibility issue. Thence, in order to solve both of these challenging problems, in this paper, we design a framework of QoS prediction for CPS services, and propose a personalized QoS prediction approach based on reputation and location-aware collaborative filtering. Our approach first calculates the reputation of users by using the Dirichlet probability distribution, so as to identify untrusted users and process their unreliable data, and then it digs out the geographic neighborhood in three levels to improve the similarity calculation of users and services. Finally, the data from geographical neighbors of users and services are fused to predict the unknown QoS values. The experiments using real datasets show that our proposed approach outperforms other existing methods in terms of accuracy, efficiency, and robustness.
机译:随着网络物理系统(CPS)的快速发展,建立具有高服务质量(QoS)的网络物理系统已成为学术界和工业界的迫切需求。在构建网络物理系统的过程中,已经发现存在大量功能等效的服务,因此从CPS中可用的大量服务中推荐合适的服务已成为当务之急。但是,由于单个用户调用CPS中的所有服务来体验其QoS是费时的,甚至是不切实际的,因此需要一种鲁棒的QoS预测方法来预测未知QoS值。 QoS预测中最常用的方法是协同过滤,但是很难处理数据稀疏和冷启动问题,同时,大多数现有方法都忽略了数据可信度问题。因此,为了解决这两个难题,本文设计了一种CPS服务的QoS预测框架,并提出了一种基于信誉和位置感知协同过滤的个性化QoS预测方法。我们的方法首先使用Dirichlet概率分布来计算用户的信誉,以识别不信任的用户并处理其不可靠的数据,然后从三个层次挖掘出地理邻域,以提高用户和服务的相似度计算。最后,将来自用户和服务的地理邻居的数据融合在一起,以预测未知的QoS值。使用真实数据集进行的实验表明,我们提出的方法在准确性,效率和鲁棒性方面优于其他现有方法。

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