Hierarchical Classification and Regression with Feature Selection

Shih-Wen Ke, Chih-Wei Yeh
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引用次数: 1

Abstract

Previous studies proposed different hierarchical estimation approaches for solving certain specific domain problems. They usually combine two or more estimation models in a hierarchical fashion. Therefore, in our previous work [2], we proposed a hierarchical approach for generic purposes, the Hierarchical Classification and Regression (HCR), that incorporates classification and estimation techniques. The HCR [2] approach significantly outperformed three benchmark flat estimation models. Having seen the potential of the proposed HCR as a generic hierarchical regression scheme, we propose to further improve the HCR by introducing feature selection (FS) techniques to the HCR. In order to thoroughly investigate the effect of FS on the HCR, we examine different numbers of attributes remained after feature selection with respect to datasets of various sizes. The results showed that the HCR with linear regression performed significantly better than the other HCRs while feature selection helped lower the RMSE slightly with only 50% of the original features.
基于特征选择的层次分类与回归
以往的研究提出了不同的层次估计方法来解决特定的领域问题。它们通常以分层的方式组合两个或更多的估计模型。因此,在我们之前的工作[2]中,我们提出了一种用于通用目的的分层方法,即分层分类和回归(HCR),它结合了分类和估计技术。HCR[2]方法显著优于三个基准平面估计模型。鉴于所提出的HCR作为一种通用的层次回归方案的潜力,我们建议通过在HCR中引入特征选择(FS)技术来进一步改进HCR。为了彻底研究FS对HCR的影响,我们研究了不同大小的数据集在特征选择后保留的不同数量的属性。结果表明,线性回归的HCR表现明显优于其他HCR,而特征选择仅对原始特征的50%略有降低RMSE。
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