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Learning multicriteria fuzzy classification method PROAFTN from data

机译:从数据中学习多准则模糊分类方法PROAFTN

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In this paper, we present a new methodology for learning parameters of multiple criteria classification method PROAFTN from data. There are numerous representations and techniques available for data mining, for example decision trees, rule bases, artificial neural networks, density estimation, regression and clustering. The PROAFTN method constitutes another approach for data mining. It belongs to the class of supervised learning algorithms and assigns membership degree of the alternatives to the classes. The PROAFTN method requires the elicitation of its parameters for the purpose of classification. Therefore, we need an automatic method that helps us to establish these parameters from the given data with minimum classification errors. Here, we propose variable neighborhood search metaheuristic for getting these parameters. The performances of the newly proposed method were evaluated using 10 cross validation technique. The results are compared with those obtained by other classification methods previously reported on the same data. It appears that the solutions of substantially better quality are obtained with proposed method than with these former ones.
机译:在本文中,我们提出了一种从数据中学习多准则分类方法PROAFTN参数的新方法。有许多可用于数据挖掘的表示和技术,例如决策树,规则库,人工神经网络,密度估计,回归和聚类。 PROAFTN方法构成了另一种数据挖掘方法。它属于监督学习算法的类别,并为该类分配替代项的隶属度。为了进行分类,PROAFTN方法需要导出其参数。因此,我们需要一种自动方法,该方法可帮助我们从给定数据中建立具有最小分类误差的参数。在这里,我们提出了可变邻域搜索元启发式方法来获取这些参数。使用10交叉验证技术评估了新方法的性能。将结果与以前通过相同数据报告的其他分类方法获得的结果进行比较。看来,所提出的方法比以前的方法能获得质量更好的解决方案。

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