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A new unsupervised fuzzy feature ranking measure for feature evaluation

机译:一种新的无监督模糊特征对特征评估的排名测量

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Feature selection and feature ranking is a preprocessing step for data mining tasks, to reduce dimensionality, removing irrelevant data, increasing learning accuracy, and improving result comprehensibility. Filter-based feature ranking techniques rank the features according to their relevance and we choose the most relevant features to build classification models subsequently. In this paper, we propose a new unsupervised filter ranking method which uses fuzzy clustering and fuzzy entropy for ranking the features. The results are compared with three famous ranking methods. The quality of the feature subsets with highest ranks is evaluated by using five classifiers. The results obtained show that our method is effective in terms of ranking the relevant features.
机译:特征选择和特征排名是数据挖掘任务的预处理步骤,减少维度,消除无关数据,增加学习准确性,提高结果可理解性。基于滤波器的特征排名技术根据其相关性排名特征,我们选择随后构建分类模型的最相关的功能。在本文中,我们提出了一种新的无监督过滤器排序方法,它使用模糊聚类和模糊熵来排名特征。结果与三种着名的排名方法进行了比较。使用五个分类器评估具有最高等级的特征子集的质量。得到的结果表明,我们的方法在排名相关特征方面是有效的。

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