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An Intelligent QoS Identification for Untrustworthy Web Services via Two-Phase Neural Networks

机译:通过两相神经网络的不值得信任Web服务的智能QoS识别

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QoS identification for untrustworthy Web services is critical in QoS management in the service computing since the performance of untrustworthy Web services may result in QoS downgrade. The key issue is to intelligently learn the characteristics of trustworthy Web services from different QoS levels, then to identify the untrustworthy ones according to the characteristics of QoS metrics. As one of the intelligent identification approaches, deep neural network has emerged as a powerful technique in recent years. In this paper, we propose a novel two-phase neural network model to identify the untrustworthy Web services. In the first phase, Web services are collected from the published QoS dataset. Then, we design a feedforward neural network model to build the classifier for Web services with different QoS levels. In the second phase, we employ a probabilistic neural network (PNN) model to identify the untrustworthy Web services from each classification. The experimental results show the proposed approach has 90.5% identification ratio far higher than other competing approaches.
机译:由于不值得信赖的Web服务的性能可能导致QoS降级,因此在服务计算中的QoS管理中,QoS识别对于服务计算中的QoS管理至关重要。关键问题是智能地了解来自不同QoS级别的值得信赖的Web服务的特征,然后根据QoS指标的特征来识别不值得信任的。作为智能识别方法之一,近年来,深神经网络已成为一种强大的技术。在本文中,我们提出了一种新型的两相神经网络模型来识别不值得信任的Web服务。在第一阶段,从已发布的QoS数据集收集Web服务。然后,我们设计前馈神经网络模型,以构建具有不同QoS级别的Web服务的分类器。在第二阶段,我们采用概率神经网络(PNN)模型来识别来自每个分类的不值得信赖的Web服务。实验结果表明,所提出的方法具有90.5%的鉴定率远远高于其他竞争方法。

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