基于RBF神经网络的组合qos预测方法

Pengcheng Zhang, Yingtao Sun, Wenrui Li, Wei Song, H. Leung
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引用次数: 5

摘要

服务质量(QoS)被认为是决定Web服务成功与否的重要因素。目前,许多QoS预测方法都集中在时间序列模型上。然而,这些方法只考虑线性和非线性时间序列。对实际QoS数据集的分析表明,它们具有其他行为特征。现有预测方法的特征分析不全面,会导致预测结果错误。此外,收集到的QoS值可能会丢失一些数据,这也会影响预测的准确性。RBF (Radial Basis Function)神经网络模型能够处理复杂的线性和非线性关系,具有很大的灵活性和适应性。为此,本文提出了一种基于RBF的QoS组合预测方法,根据数据特点,从已建立的线性或非线性预测模型和动态灰色预测模型中选择最优模型。接下来,将这些模型的预测结果作为输入传递到RBF训练模型中,然后用于预测。使用公共QoS数据集和四个真实的QoS数据集,我们通过将其与之前的方法进行比较来评估所提出的方法。实验结果表明,该方法较好地提高了识别的准确性和有效性。
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A Combinational QoS-Prediction Approach Based on RBF Neural Network
Quality of Service (QoS) is considered as an important factor to determine the success of a Web Service. Currently, many QoS prediction approaches focus on time series models. However, these approaches only consider linear and nonlinear time series. Analysis of real QoS datasets shows that they are characterized by other behaviors. Incomplete characteristics analysis of existing prediction approaches will result in wrong prediction results. Furthermore, the collected QoS values may miss some data, which will also impact the prediction accuracy. RBF (Radial Basis Function) neural network model can manage the complex linear and nonlinear relationship, with great flexibility and adaptability. Therefore, we propose a novel combinational prediction approach for QoS based on RBF, which chooses the optimal model from the established linear or nonlinear prediction model, and dynamic gray prediction model according to the data characteristics. Next, the predicted results of these models are passed into the RBF training model as the input, and then used for prediction. Using a public QoS dataset and four real-world QoS datasets, we evaluate the proposed approach by comparing it with previous approach. The experimental results show that our approach is better and improves the accuracy and validity.
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