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An adaptive approximation for Gaussian wavelet kernel

机译:高斯小波核的自适应逼近

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Kernel machine plays a critical role in science community since temporal data become more important and popular with rapidly increasing big data analysis. A major problem for the machine is difficulty in constructing kernel function. We show that it is possible to adaptively estimate the parameters of Gaussian wavelet kernel in Laplace method. Our approach is constructed on an obvious fact that the gradient of the kernel with respect to a central variable of feature space becomes zero. It is remarkable that the complexity of our estimation method is O(N) for N data. In order to validate the performance of the proposed approach, we simulate two kernel regression models which exploit the proposed approach on real electricity load data from Korea power exchange and electricity consumption data from Ireland's Commission for Energy Regulation.
机译:内核机器在科学界中起着至关重要的作用,因为随着快速增长的大数据分析,时间数据变得越来越重要和流行。该机器的主要问题是难以构造内核功能。我们证明了有可能在拉普拉斯方法中自适应地估计高斯小波核的参数。我们的方法基于一个显而易见的事实,即内核相对于特征空间中心变量的梯度变为零。值得注意的是,对于N个数据,我们的估计方法的复杂度为O(N)。为了验证所提出方法的性能,我们模拟了两个内核回归模型,这些模型对韩国电力交易所的实际电力负荷数据和爱尔兰能源监管委员会的电力消耗数据进行了研究。

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