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Data linearity using Kernel PCA with Performance Evaluation of Random Forest for training data: A machine learning approach

机译:使用内核PCA和随机森林性能评估训练数据的数据线性度:一种机器学习方法

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In this study, Kernel Principal Component Analysis is applied to understand and visualize non-linear variation patterns by inverse mapping the projected data from a high-dimensional feature space back to the original input space. Performance Evaluation of Random Forest on various data sets has been compared to understand accuracy and various statistical measures of interest.
机译:在这项研究中,通过将投影数据从高维特征空间反映射回原始输入空间,将内核主成分分析应用于理解和可视化非线性变化模式。比较了随机森林在各种数据集上的性能评估,以了解准确性和感兴趣的各种统计量度。

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