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Time Series Prediction Using Nonlinear Support Vector Regression Based on Classification

机译:基于分类的非线性支持向量回归的时间序列预测

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In this paper, an introduction of traditional time series prediction model using SVM has been first given, and then followed by description of a new network training algorithm and a nonlinear regression algorithm of support vector machine which are based on classification. Compared with traditional SVM regression algorithm, CSVR algorithm is less sensitive and more robust. It is another advantage that the value of the parameters can be set according to individual situation. More importantly, this method can also escape from over-fitting. Finally, an analysis of this new method has been given to demonstrate the validity of this method.
机译:本文首先给出了使用SVM的传统时间序列预测模型的引入,然后通过基于分类的支持向量机的新网络训练算法和支持向量机的非线性回归算法。与传统的SVM回归算法相比,CSVR算法不太敏感,更强大。这是另一个优点,即可以根据个体情况来设置参数的值。更重要的是,这种方法也可以逃离过度拟合。最后,已经给出了这种新方法的分析来证明这种方法的有效性。

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