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A comparison of random forest and its Gini importance with standard chemometric methods for the feature selection and classification of spectral data

机译:使用标准化学计量学方法对随机森林及其基尼重要性进行比较以进行光谱数据的特征选择和分类

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摘要

BackgroundRegularized regression methods such as principal component or partial least squares regression perform well in learning tasks on high dimensional spectral data, but cannot explicitly eliminate irrelevant features. The random forest classifier with its associated Gini feature importance, on the other hand, allows for an explicit feature elimination, but may not be optimally adapted to spectral data due to the topology of its constituent classification trees which are based on orthogonal splits in feature space.
机译:背景技术诸如主成分或偏最小二乘回归之类的规范化回归方法在学习高维光谱数据时表现良好,但无法明确消除不相关的特征。另一方面,具有相关基尼特征重要性的随机森林分类器允许显式消除特征,但由于其组成分类树的拓扑是基于特征空间中的正交划分,因此可能无法最佳地适应光谱数据。

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