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Compactly Supported Basis Functions as Support Vector Kernels for Classification

机译:紧密支持的基函数作为分类的支持向量核

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Wavelet kernels have been introduced for both support vector regression and classification. Most of these wavelet kernels do not use the inner product of the embedding space, but use wavelets in a similar fashion to radial basis function kernels. Wavelet analysis is typically carried out on data with a temporal or spatial relation between consecutive data points. We argue that it is possible to order the features of a general data set so that consecutive features are statistically related to each other, thus enabling us to interpret the vector representation of an object as a series of equally or randomly spaced observations of a hypothetical continuous signal. By approximating the signal with compactly supported basis functions and employing the inner product of the embedding L_2 space, we gain a new family of wavelet kernels. Empirical results show a clear advantage in favor of these kernels.
机译:已经引入了小波核来支持向量回归和分类。这些小波内核大多数不使用嵌入空间的内积,而是以与径向基函数内核相似的方式使用小波。小波分析通常是对连续数据点之间具有时间或空间关系的数据进行的。我们认为可以对通用数据集的特征进行排序,以便连续的特征在统计上相互关联,从而使我们能够将对象的矢量表示解释为假设连续的一系列均等或随机分布的观测值信号。通过使用紧密支持的基函数对信号进行逼近并利用嵌入L_2空间的内积,我们获得了一个新的小波核族。实验结果表明,使用这些内核具有明显的优势。

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