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Feature Space Enrichment by Incorporation of Implicit Features for Effective Classification

机译:通过合并隐式特征以有效分类来丰富特征空间

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Feature Space Conversion for classifiers is the process by which the data that is to be fed into the classifier is transformed from one form to another. The motivation behind doing this is to enhance the "discriminative power" of the data together with preserving its "information content". In this paper, a new method of feature space conversion is explored, wherein "enrichment" of the feature space is carried out by the augmentation of the existing features with new "implicit" features. The modus operandi involves generation of association rules in one case and closed frequent patterns in another and the extraction of the new features from these. This new feature space is first made use of independently to feed the classifier and then it is used in unison with the original feature space. The effectiveness of these methods is subsequently verified experimentally and expressed in terms of the classification accuracy achieved by the classifier.
机译:分类器的特征空间转换是将要输入分类器的数据从一种形式转换为另一种形式的过程。这样做的动机是增强数据的“区分能力”,同时保留其“信息内容”。在本文中,探索了一种新的特征空间转换方法,其中特征空间的“丰富”是通过使用新的“隐式”特征对现有特征进行扩充来实现的。操作方法涉及在一种情况下生成关联规则,在另一种情况下生成封闭规则,并从中提取新特征。首先使用这个新的特征空间来独立地输入分类器,然后将其与原始特征空间一起使用。这些方法的有效性随后通过实验进行了验证,并通过分类器实现的分类精度来表示。

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