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Feature Selection Methods on Biological Knowledge Discovery and Data Mining: A Survey

机译:生物知识发现与数据挖掘的特征选择方法研究

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Feature selection is an important component of data mining and knowledge discovery process, due to the availability of data with hundreds of variables leading to data with very high dimension. It aims at reducing the number of features by removing irrelevant or redundant ones, while trying to reduce computation time, preserve or improve prediction performance, and to a better understanding of the data in machine learning or pattern recognition and specific in bioinformatics applications where the number of features is significantly larger than the number of samples. In this paper we provide an overview of some feature selection methods present in literature. We focus on Filter, Wrapper and hybrid methods. We also apply some of the feature selection techniques on standard databank to demonstrate their applicability.
机译:特征选择是数据挖掘和知识发现过程的重要组成部分,这归因于具有数百个变量的数据的可用性,从而导致数据具有非常高的维度。它旨在通过删除不相关或冗余的特征来减少功能部件的数量,同时尝试减少计算时间,保留或改善预测性能,并更好地理解机器学习或模式识别中以及特定于生物信息学应用中的数据特征的数量显着大于样本数量。在本文中,我们提供了一些文献中存在的特征选择方法的概述。我们专注于过滤器,包装器和混合方法。我们还将一些特征选择技术应用于标准数据库,以证明其适用性。

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