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Multi-scale Support Vector Regression

机译:多尺度支持向量回归

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摘要

A multi-kernel Support Vector Machine model, called Hierarchical Support Vector Regression (HSVR), is proposed here. This is a self-organizing (by growing) multiscale version of a Support Vector Regression (SVR) model. It is constituted of hierarchical layers, each containing a standard SVR with Gaussian kernel, at decreasing scales. HSVR have been applied to a noisy synthetic dataset. The results illustrate their power in denoising the original data, obtaining an effective multiscale reconstruction of better quality than that obtained by standard SVR. Furthermore with this approach the well known problem of tuning the SVR parameters is strongly simplified.
机译:这里提出了一种多核支持向量机模型,称为分层支持向量回归(HSVR)。这是一个自组织(通过增长)的支持向量回归(SVR)模型的多尺度版本。它由分层层构成,每个分层层都包含一个标准SVR的具有高斯内核,在减少尺度上。 HSVR已应用于嘈杂的合成数据集。结果说明了它们在去噪原始数据方面的功率,从而获得比通过标准SVR获得的更好的质量的多尺度重建。此外,这种方法强烈简化了调整SVR参数的众所周知的问题。

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