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An Empirical Study on Supervised and Unsupervised Fuzzy Measure Construction Methods in Highly Imbalanced Classification

机译:高度不平衡分类中有监督和无监督模糊测度构建方法的实证研究

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The design of an ensemble of classifiers involves the definition of an aggregation mechanism that produces a single response obtained from the information provided by the classifiers. A specific aggregation methodology that has been studied in the literature is the use of fuzzy integrals, such as the Choquet or the Sugeno integral, where the associated fuzzy measure tries to represent the interaction existing between the classifiers of the ensemble. However, defining the big number of coefficients of a fuzzy measure is not a trivial task and therefore, many different algorithms have been proposed. These can be split into supervised and unsupervised, each class having different learning mechanisms and particularities. Since there is no clear knowledge about the correct method to be used, in this work we propose an experimental study for comparing the performance of eight different learning algorithms under the same framework of imbalanced dataset. Moreover, we also compare the specific fuzzy integral (Choquet or Sugeno) and their synergies with the different fuzzy measure construction methods.
机译:分类器集合的设计涉及聚合机制的定义,该聚合机制生成从分类器提供的信息中获得的单个响应。文献中已研究的一种特定的聚合方法是使用模糊积分,例如Choquet积分或Sugeno积分,其中相关的模糊测度试图表示整体分类器之间存在的相互作用。但是,定义模糊量度的大量系数并不是一件容易的事,因此,提出了许多不同的算法。这些可以分为有监督的和无监督的,每个班级都有不同的学习机制和特殊性。由于没有正确使用方法的明确知识,因此在这项工作中,我们提出了一项实验研究,用于比较在不平衡数据集的相同框架下八种不同学习算法的性能。此外,我们还将特定模糊积分(Choquet或Sugeno)及其协同作用与不同的模糊测度构建方法进行了比较。

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