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Study on Unsupervised Feature Selection Method Based on Extended Entropy

机译:基于扩展熵的无监督特征选择方法研究

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Feature selection techniques are designed to find the relevant feature subset of the original features that can facilitate clustering, classification and retrieval. It is an important research topic in pattern recognition and machine learning. Feature selection is mainly partitioned into two classes, i.e. supervised and unsupervised methods. Currently research mostly concentrates on supervised ones. Few efficient unsupervised feature selection methods have been developed because no label information is available. On the other hand, it is difficult to evaluate the selected features. An unsupervised feature selection method based on extended entropy is proposed here. The information loss based on extended entropy is used to measure the correlation between features. The method assures that the selected features have both big individual information and little redundancy information with the selected features. At last, the efficiency of the proposed method is illustrated with some practical datasets.
机译:特征选择技术旨在查找原始特征的相关特征子集,从而有助于聚类,分类和检索。它是模式识别和机器学习中的重要研究课题。特征选择主要分为两类,即监督方法和非监督方法。目前的研究主要集中在有监督的研究上。由于没有可用的标签信息,因此很少开发出有效的无监督特征选择方法。另一方面,难以评估所选特征。提出了一种基于扩展熵的无监督特征选择方法。基于扩展熵的信息损失用于度量特征之间的相关性。该方法确保所选择的特征与所选择的特征既具有大的个人信息又具有很少的冗余信息。最后,通过一些实际的数据集说明了该方法的有效性。

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