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On-Line Support Vector Machine Regression

机译:在线支持向量机回归

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摘要

This paper describes an on-line method for building ε-insensitive support vector machines for regression as described in [12]. The method is an extension of the method developed by [1] for building incremental support vector machines for classification. Machines obtained by using this approach are equivalent to the ones obtained by applying exact methods like quadratic programming, but they are obtained more quickly and allow the incremental addition of new points, removal of existing points and update of target values for existing data. This development opens the application of SVM regression to areas such as on-line prediction of temporal series or generalization of value functions in reinforcement learning.
机译:本文描述了一种在线方法,用于构建ε不敏感的支持向量机进行回归,如[12]中所述。该方法是[1]开发的方法的扩展,用于建立用于分类的增量支持向量机。通过这种方法获得的机器等同于通过应用诸如二次编程之类的精确方法获得的机器,但是它们获得得更快,并且允许增量添加新点,移除现有点以及更新现有数据的目标值。这一发展为支持向量机回归在诸如时间序列在线预测或强化学习中的价值函数泛化等领域开辟了应用。

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