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Input and Structure Selection for k-NN Approximator

机译:k-NN近似器的输入和结构选择

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This paper presents k-NN as an approximator for time series prediction problems. The main advantage of this approximator is its simplicity. Despite the simplicity, k-NN can be used to perform input selection for nonlinear models and it also provides accurate approximations. Three model structure selection methods are presented: Leave-one-out, Bootstrap and Bootstrap 632. We will show that both Bootstraps provide a good estimate of the number of neighbors, k, where Leave-one-out fails. Results of the methods are presented with the Electric load from Poland data set.
机译:本文提出k-NN作为时间序列预测问题的近似器。该近似器的主要优点是简单。尽管简单,但k-NN可以用于执行非线性模型的输入选择,并且还可以提供精确的近似值。提出了三种模型结构选择方法:Leave-one-out,Bootstrap和Bootstrap632。我们将显示,两个Bootstraps都可以很好地估计邻居,k的数量,其中leave-one-out失败。方法的结果与来自波兰数据集的电力负荷一起显示。

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