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Feature selection based on information theory for pattern classification

机译:基于图案分类信息理论的特征选择

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Feature selection acts as a significant problem for pattern classification systems. We discuss about how to select valuable features according to the maximal statistical dependency criterion based on mutual information. In majority of datasets the features are not independent and their combination delivers more vital information than their individual forecast. In this paper we propose a feature selection method for semi supervised classification based upon the influence of information theory which provides a reliable measure of relation between the classes and features. A hybrid feature selection method invoking information theory is proposed. The implementation is also validated with two freely available datasets acquired from UCI and NCI data repositories. The significance of the complete estimation of mutual information is discussed when employed as a feature selection criterion.
机译:特征选择是模式分类系统的重大问题。 我们讨论如何根据相互信息根据最大统计依赖标准选择有价值的功能。 在大多数数据集中,功能不是独立的,它们的组合提供比个人预测更重要的信息。 本文基于信息理论的影响,提出了一种特征选择方法,该特征选择方法是基于信息理论的影响,它提供了类和特征之间的可靠性衡量标准。 提出了一种调用信息理论的混合特征选择方法。 该实现也用来自UCI和NCI数据存储库的两个可自由的数据集进行了验证。 当使用作为特征选择标准时,讨论了相互信息完全估计的重要性。

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