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Fuzzy set theoretic adjustment to training set class labels using robust location measures

机译:使用稳健的位置度量对训练集类别标签进行模糊集理论调整

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Fuzzy class label adjustment is a classification preprocessing strategy that compensates for the possible imprecision of class labels. Using training vectors, robust measures of location and dispersion are computed for each class center. Based on distances from these centers, fuzzy sets are constructed that determine the degree to which each input vector belongs to each class. These membership values are then used to adjust class labels for the training vectors. This strategy is evaluated using a multilayer perceptron and two different robust location measures for the discrimination of meteorological storm events and is shown to improve the performance of the underlying classifier.
机译:模糊类标签调整是一种分类预处理策略,可以补偿类标签的可能不精确性。使用训练向量,为每个班级中心计算位置和分散的鲁棒度量。基于与这些中心的距离,构造模糊集,以确定每个输入向量属于每个类别的程度。然后,将这些隶属度值用于调整训练向量的类别标签。使用多层感知器和两种不同的鲁棒性位置测量方法对气象暴风雨事件进行判别,评估了该策略,结果表明该策略可改善基础分类器的性能。

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