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Neural network with multiple training methods for web service quality of service parameter prediction

机译:具有多种训练方法的神经网络,用于Web服务的服务质量参数预测

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Web services have several Quality of Service (QoS) properties. Some of the QoS parameters for web services are availability, response time, throughput, modularity, reliability, and interoperability. A client of a web service can have several web services with similar functionality but different QoS properties for application integration. QoS properties play a decisive factor in selecting the best web services from amongst services having similar functionality. Often QoS parameters are not available, not easy to compute or outdated. We present a method to estimate the QoS parameters of web services from the information contained in web service interfaces. We propose a method based on extracting several data, procedural and structural quantity metrics from the web service interfaces and using them as predictors for estimating the QoS properties. We apply neural network method with 6 different training methods for building a predictive model. Our results demonstrate that the proposed approach is effective. Our experimental results reveal that the structural quality metrics outperforms the procedural and data quality metrics in-terms of the RMSE (Root-Mean-Square Error) performance metric. We conclude that the NLM method (Neural Network with Levenberg-Marquardt training method) out performs five other popular neural network training methods.
机译:Web服务具有几个服务质量(QoS)属性。 Web服务的某些QoS参数是可用性,响应时间,吞吐量,模块化,可靠性和互操作性。 Web服务的客户端可以具有功能相似但用于应用程序集成的QoS属性不同的多个Web服务。 QoS属性在从具有类似功能的服务中选择最佳的Web服务时起着决定性的作用。 QoS参数通常不可用,不易计算或过时。我们提出了一种从Web服务接口中包含的信息估计Web服务QoS参数的方法。我们提出了一种方法,该方法基于从Web服务接口中提取若干数据,过程量和结构量度量,并将它们用作预测器来估计QoS属性。我们将神经网络方法与6种不同的训练方法结合使用来构建预测模型。我们的结果表明,提出的方法是有效的。我们的实验结果表明,就RMSE(均方根误差)性能指标而言,结构质量指标优于程序和数据质量指标。我们得出的结论是,NLM方法(带有Levenberg-Marquardt训练方法的神经网络)执行了其他五种流行的神经网络训练方法。

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