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Information Transmission and Nonspecificity in Feature Selection

机译:特征选择中的信息传输和非特点

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In this paper we propose a novel feature selection method which is based on fuzzy measures. More specifically, we apply a similarity measure to form similarity matrices from the data and apply non-specificity on similarity degrees in order to conduct feature selection. To measure how relevant a particular feature is, we apply an information transmission measure. We exemplify our method on a simple artificial case to demonstrate its ability to select informative features. Moreover, we test our method on two real world data sets, the chronic kidney disease and the diabetic retinopathy Debrecen dataset. The nonspecificity-based feature selection method leads for both datasets to improvements in the mean classification performance. In comparison with the popular ReliefF algorithm and the Fisher Score, the new method reaches competitive results and also accomplishes the highest mean accuracy for both datasets.
机译:在本文中,我们提出了一种基于模糊措施的新颖特征选择方法。更具体地,我们应用相似度量来形成来自数据的相似性矩阵,并在相似度上应用非特征,以便进行特征选择。为了测量特定特征的相关方式,我们应用信息传输测量。我们举例说明我们在简单的人为案例上的方法来展示其选择信息特征的能力。此外,我们在两个真实世界数据集,慢性肾病和糖尿病视网膜病变Debrecen数据集中测试我们的方法。基于非特点的特征选择方法导致数据集在平均分类性能中改进。与流行的Creieff算法和Fisher分数相比,新方法达到了竞争结果,并且还实现了两个数据集的最高平均准确性。

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