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Context-Aware Prediction of QoS and QoE Properties for Web Services

机译:Web服务的QoS和QoE属性的上下文感知预测

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Web Services are commonly used for integrating applications between partners over the Internet. Since services with the same functionality are advertised with different Quality of Service (QoS) levels and are assessed with different Quality of Experience (QoE), choosing the right service may be quite challenging. It is essential for a user to predict QoS and QoE values as accurately as possible in order to find a suitable service. Usually collaborative filtering is applied using similar users and services for predictive purposes. We hypothesize a correlation between context data and QoS and QoE dimensions which can be additionally incorporated to improve predictive accuracy and scalability. In this paper we present the two algorithms PredReg and PredNet in order to predict QoS and QoE values for Web Services. The PredReg algorithm is based on multiple linear regression. The PredNet algorithm uses additionally a neural network for prediction. Both algorithms include context data of users and services generating personalized predictions for the requesting user. In addition, PredNet is able to process categorical variables so that user profiles can also be considered for predictions. We evaluated PredReg and PredNet and compared them with the state-of-the-art approach WSRec [1] which is a memory-based collaborative filtering approach. Our experiments demonstrated that PredReg and PredNet provide a higher predictive accuracy and a significantly improved scalability. Therefore, we recommend the application of PredReg and PredNet for future personalized predictions.
机译:Web服务通常用于通过Internet在合作伙伴之间集成应用程序。由于具有相同功能的服务以不同的服务质量(QoS)级别进行广告宣传,并且以不同的体验质量(QoE)进行评估,因此选择正确的服务可能会非常困难。用户必须尽可能准确地预测QoS和QoE值,以找到合适的服务。通常,出于预测目的,使用相似的用户和服务来应用协作过滤。我们假设上下文数据与QoS和QoE维度之间具有相关性,可以将其附加以提高预测准确性和可伸缩性。在本文中,我们介绍了两种算法PredReg和PredNet,以预测Web服务的QoS和QoE值。 PredReg算法基于多元线性回归。 PredNet算法另外使用神经网络进行预测。两种算法都包括用户和服务的上下文数据,这些服务为请求用户生成个性化预测。此外,PredNet能够处理分类变量,因此也可以考虑使用用户配置文件进行预测。我们评估了PredReg和PredNet,并将它们与最新的方法WSRec [1]进行了比较,后者是一种基于内存的协作过滤方法。我们的实验表明PredReg和PredNet提供了更高的预测准确性和显着改善的可伸缩性。因此,我们建议将PredReg和PredNet应用于未来的个性化预测。

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