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An Incremental Learning Strategy for Support Vector Regression

机译:支持向量回归的增量学习策略

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Support vector machine (SVM) provides good generalization performance but suffers from a large amount of computation. This paper presents an incremental learning strategy for support vector regression (SVR). The new method firstly formulates an explicit expression of ‖W‖~2 by constructing an orthogonal basis in feature space together with a basic Hilbert space identity, and then finds the regression function through minimizing the formula of ‖W‖~2 rather than solving a convex programming problem. Particularly, we combine the minimization of ‖W‖~2 with kernel selection that can lead to good generalization performance. The presented method not only provides a novel way for incremental SVR learning, but opens an opportunity for model selection of SVR as well. An artificial data set, a benchmark data set and a real-world data set are employed to evaluate the method. The simulations support the feasibility and effectiveness of the proposed approach.
机译:支持向量机(SVM)提供了良好的泛化性能,但要进行大量的计算。本文提出了一种用于支持向量回归(SVR)的增量学习策略。该新方法首先通过在特征空间中构造正交基以及基本的希尔伯特空间恒等式来构造“ W”〜2的显式表达式,然后通过最小化“ W”〜2的公式而不是求解一个方程来找到回归函数。凸编程问题。特别是,我们将“ W”〜2的最小化与内核选择相结合,可以实现良好的泛化性能。提出的方法不仅为增量式SVR学习提供了一种新颖的方法,而且还为SVR的模型选择提供了机会。人工数据集,基准数据集和实际数据集用于评估该方法。仿真结果证明了该方法的可行性和有效性。

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