首页> 外文期刊>International Journal of Artificial Intelligence Tools: Architectures, Languages, Algorithms >A NOVEL FEATURE SELECTION ALGORITHM WITH SUPERVISED MUTUAL INFORMATION FOR CLASSIFICATION
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A NOVEL FEATURE SELECTION ALGORITHM WITH SUPERVISED MUTUAL INFORMATION FOR CLASSIFICATION

机译:用于分类的具有监督的互信息的新型特征选择算法

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摘要

Feature selection is essential in data mining and pattern recognition, especially for database classification. During past years, several feature selection algorithms have been proposed to measure the relevance of various features to each class. A suitable feature selection algorithm normally maximizes the relevancy and minimizes the redundancy of the selected features. The mutual information measure can successfully estimate the dependency of features on the entire sampling space, but it cannot exactly represent the redundancies among features. In this paper, a novel feature selection algorithm is proposed based on maximum relevance and minimum redundancy criterion. The mutual information is used to measure the relevancy of each feature with class variable and calculate the redundancy by utilizing the relationship between candidate features, selected features and class variables. The effectiveness is tested with ten benchmarked datasets available in UCI Machine Learning Repository. The experimental results show better performance when compared with some existing algorithms.
机译:特征选择在数据挖掘和模式识别中至关重要,特别是对于数据库分类而言。在过去的几年中,已经提出了几种特征选择算法来测量各种特征与每个类别的相关性。合适的特征选择算法通常使相关性最大化,并使所选特征的冗余最小化。互信息量度可以成功估计特征在整个采样空间上的依赖性,但不能准确表示特征之间的冗余。本文提出了一种基于最大关联度和最小冗余准则的特征选择算法。互信息用于测量每个特征与类变量的相关性,并通过利用候选特征,所选特征和类变量之间的关系来计算冗余。使用UCI机器学习存储库中提供的十个基准数据集测试了有效性。与某些现有算法相比,实验结果显示出更好的性能。

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