Feature selection and classification using ensembles of genetic programs and within-class and between-class permutations

Annica Ivert, C. Aranha, H. Iba
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引用次数: 1

Abstract

Many feature selection methods are based on the assumption that important features are highly correlated with their corresponding classes, but mainly uncorrelated with each other. Often, this assumption can help eliminate redundancies and produce good predictors using only a small subset of features. However, when the predictability depends on interactions between features, such methods will fail to produce satisfactory results. In this paper a method that can find important features, both independently and dependently discriminative, is introduced. This method works by performing two different types of permutation tests that classify each of the features as either irrelevant, independently predictive or dependently predictive. It was evaluated using a classifier based on an ensemble of genetic programs. The attributes chosen by the permutation tests were shown to yield classifiers at least as good as the ones obtained when all attributes were used during training - and often better. The proposed method also fared well when compared to other attribute selection methods such as RELIEFF and CFS. Furthermore, the ability to determine whether an attribute was independently or dependently predictive was confirmed using artificial datasets with known dependencies.
利用遗传程序集合和类内、类间排列进行特征选择和分类
许多特征选择方法都是基于重要特征与其对应类高度相关的假设,而主要是互不相关的假设。通常,这种假设可以帮助消除冗余并仅使用一小部分特征生成良好的预测器。然而,当可预测性依赖于特征之间的相互作用时,这种方法将无法产生令人满意的结果。本文介绍了一种寻找重要特征的方法,该方法既可以独立判别,也可以独立判别。该方法通过执行两种不同类型的排列测试来工作,这些测试将每个特征分类为不相关的、独立预测的或依赖预测的。使用基于遗传程序集合的分类器对其进行评估。排列测试所选择的属性所产生的分类器至少与在训练期间使用所有属性所获得的分类器一样好,而且往往更好。与RELIEFF和CFS等其他属性选择方法相比,所提出的方法也表现良好。此外,使用具有已知依赖关系的人工数据集确认了确定属性是独立预测还是依赖预测的能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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