A comparative study of two kernel methods: Support Vector Regression (SVR) and Regularization Network (RN) and application to a thermal process PT326

Intissar Sayehi, Okba Touali, B. Bouallegue, R. Tourki
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引用次数: 3

Abstract

In latest years, learning algorithm based Kernel function has been playing crucial role in the research area. Support Vector Machines are getting a large success due to their good performances in classification and regression. Regularization Networks and Support Vector Regression are kernel methods solving difficult learning tasks as estimating a nonlinear system from distributed data. In this work, we present these methods for identification of nonlinear systems in RKHS spaces. The Examples taken are a benchmark and a thermal process known as The Process Trainer PT 326. For each example, we applied the two kernel methods to observe its influence on the validation of the RKHS model. The results prove the efficiency of the learning algorithms used and show the excellence of the SVR method in term of prediction error and superiority of the RN in term of computation time.
支持向量回归(SVR)和正则化网络(RN)两种核方法的比较研究及其在热过程PT326中的应用
近年来,基于核函数的学习算法在研究领域中发挥了重要作用。支持向量机由于其在分类和回归方面的良好表现而获得了很大的成功。正则化网络和支持向量回归是解决从分布式数据估计非线性系统等困难学习任务的核心方法。在这项工作中,我们提出了这些辨识RKHS空间中非线性系统的方法。所采用的示例是一个基准和一个称为过程培训师PT 326的热过程。对于每个示例,我们应用两种核方法来观察其对RKHS模型验证的影响。结果证明了所使用的学习算法的有效性,并显示了SVR方法在预测误差方面的优势和RN在计算时间方面的优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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