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Fuzzy decision tree using soft discretization and a genetic algorithm based feature selection method

机译:基于软离散化的模糊决策树和基于遗传算法的特征选择方法

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In data mining, decision tree learning is an approach that uses a decision tree as a predictive model mapping observations to conclusions. The fuzzy extension of decision tree learning adopts the definition of soft discretization. Many studies have shown that decision tree learning can benefit from the soft discretization method leading to improved predictive accuracy. This paper implements a Fuzzy Decision Tree (FDT) classifier that is based on soft discretization by identifying the best “cut-point”. The selection of important features of a data set is a very important preprocessing task in order to obtain higher accuracy of the classifier as well as to speed up the learning task. Therefore, we are applying a feature selection method that is based on the ideas of mutual information and genetic algorithms. The performance evaluation conducted has shown that our FDT classifier obtains in some cases higher values than other decision tree and fuzzy decision tree approaches based on measures such as true positive rate, false positive rate, precision and area under the curve.
机译:在数据挖掘中,决策树学习是一种方法,它使用决策树作为预测模型映射观察到得出结论。决策树学习的模糊延伸采用软离散化的定义。许多研究表明,决策树学习可以从柔软的离散化方法中受益,从而提高预测精度。本文通过识别最佳&#x201c来实现基于软离散化的模糊决策树(FDT)分类器;剪切点”选择数据集的重要特征是一个非常重要的预处理任务,以便获得分类器的更高精度以及加速学习任务。因此,我们正在应用基于互信息和遗传算法的思想的特征选择方法。进行的性能评估表明,我们的FDT分类器基于诸如真正的阳性率,假阳性率,精度和面积的措施,在某些情况下比其他决策树和模糊决策树方法更高的值。

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