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A Constrained Learning Approach to the Prediction of Reliability Ranking for WSN Services

机译:WSN服务可靠性排名预测的约束学习方法

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Wireless Sensor Network Service Applications (WSAs) are playing an important role in Wireless Sensor Network (WSN), which bridge the gap between WSN and existing widely deployed Service-Oriented Architecture (SOA) technologies. Function properties of WSN services are important, which assure correct functionality of WSA. Meanwhile, nonfunctional properties such as reliability might significantly influence the client-perceived quality of WSA. Thus, building high-reliability WSA is a critical research problem. Reliability rankings provide valuable information for making optimal WSN service selection from functionally equivalent service candidates. There existed several methods that can conduct reliability ranking prediction of WSN services. However, it is difficult to evaluate which one is better than another, because those acquire different rankings with different preference functions. This paper proposes a constrained learning prediction of reliability ranking approach for WSN services on past service usage experiences of other WSAs, which can achieve higher accuracy and improve the performance by pruning candidate services. To validate the authors' approach, large-scale experiments are conducted based on a real-world WSN service dataset. The results show that their proposed approach achieves higher prediction accuracy than other approaches.
机译:无线传感器网络服务应用程序(WSA)在无线传感器网络(WSN)中扮演着重要角色,无线传感器网络弥合了WSN与现有的广泛部署的面向服务的体系结构(SOA)技术之间的差距。 WSN服务的功能属性很重要,可以确保WSA的正确功能。同时,诸如可靠性之类的非功能属性可能会严重影响客户对WSA的感知质量。因此,建立高可靠性的WSA是一个关键的研究问题。可靠性等级提供有价值的信息,以便从功能上等效的候选服务中进行最佳WSN服务选择。存在几种可以进行WSN服务的可靠性等级预测的方法。但是,很难评估哪一个优于另一种,因为那些获得的排名具有不同的偏好函数。本文提出了一种基于其他WSA过去服务使用经验的WSN服务可靠性分级方法的受限学习预测,可以通过修剪候选服务来达到更高的准确性并提高性能。为了验证作者的方法,基于真实的WSN服务数据集进行了大规模实验。结果表明,他们提出的方法比其他方法具有更高的预测精度。

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