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Stopping Criteria for Ensemble-Based Feature Selection

机译:基于集合的特征选择的停止条件

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摘要

Selecting the optimal number of features in a classifier ensemble normally requires a validation set or cross-validation techniques. In this paper, feature ranking is combined with Recursive Feature Elimination (RFE), which is an effective technique for eliminating irrelevant features when the feature dimension is large. Stopping criteria are based on out-of-bootstrap (OOB) estimate and class separability, both computed on the training set thereby obviating the need for validation. Multi-class problems are solved using the Error-Correcting Output Coding (ECOC) method. Experimental investigation on natural benchmark data demonstrates the effectiveness of these stopping criteria.
机译:在分类器集合中选择最佳数量的特征通常需要验证集或交叉验证技术。在本文中,特征排名与递归特征消除(RFE)相结合,这是一种在特征维数较大时消除不相关特征的有效技术。停止标准基于引导程序外(OOB)估计和类可分离性,二者均在训练集上计算得出,从而无需进行验证。使用纠错输出编码(ECOC)方法可以解决多类问题。对自然基准数据的实验研究证明了这些停止标准的有效性。

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