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Kernel k-nearest neighbor classifier based on decision tree ensemble for SAR modeling analysis

机译:基于决策树集成的核k近邻分类器用于SAR建模分析

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摘要

Kernel approaches that can effectively solve nonlinear problems using implicit nonlinear mapping have been gaining popularity in the field of chemistry. In the present study, a novel tree kernel k-nearest neighbor algorithm (TKk-NN) has been proposed. First, an informative novel tree kernel is constructed based on the decision tree ensemble. The constructed tree kernel can effectively use important variables for classification and neglect useless variables through variable importance ranking during the process of building the kernel. Under the framework of kernel methods, this tree kernel is then extended to the k-nearest neighbor algorithm. Three SAR datasets together with the simulated data were used to test the performance of k-NN with tree and radial basis function kernels. The results show that TKk-NN really is an attractive alternative technique.
机译:可以使用隐式非线性映射有效解决非线性问题的内核方法已在化学领域中普及。在本研究中,提出了一种新的树核k最近邻算法(TKk-NN)。首先,基于决策树集合构造信息丰富的新颖树核。所构建的树形内核可以在构建内核的过程中通过变量重要性排序有效地使用重要变量进行分类,并忽略无用的变量。然后,在内核方法的框架下,将此树内核扩展为k近邻算法。使用三个SAR数据集以及模拟数据来测试具有树和径向基函数核的k-NN的性能。结果表明,TKk-NN确实是一种有吸引力的替代技术。

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