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CORRELATION-BASED FEATURE SELECTION USING EVOLUTIONARY PROGRAMMING

机译:基于相关的特征选择使用进化编程

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Feature selection has recently been the subject of intensive research in data mining, specially for datasets with a large number of attributes. Recent work has shown that feature selection can have a positive affect on the performance of machine learning algorithms. The success of many learning algorithms in their attempts to construct models of data, hinges on the reliable identification of a small set of highly predictive attributes. The inclusion of irrelevant, redundant and noisy attributes in the model building process phase can result in poor predictive performance and increased computation. This paper describes a correlation-based algorithm using evolutionary programming for classification problems to determine the goodness of feature subsets, and evaluates its effectiveness with some common machine learning algorithms.
机译:功能选择最近是数据挖掘密集研究的主题,特别是具有大量属性的数据集。最近的工作表明,特征选择可以对机器学习算法的性能产生积极影响。许多学习算法的成功在他们尝试构建数据模型中,铰链对一小组高度预测属性的可靠识别。在模型构建过程阶段中包含无关,冗余和嘈杂的属性可能导致预测性能差和增加计算。本文介绍了一种基于相关的算法,使用进化规划进行分类问题以确定特征子集的良好,并评估其与一些公共机器学习算法的效力。

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