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M-FMCN: Modified Fuzzy Min-Max Classifier Using Compensatory Neurons

机译:M-FMCN:使用补偿神经元的改进的模糊最小-最大分类器

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摘要

A new fuzzy Min-Max classifier is proposed that uses modified compensatory neurons. The proposed classifier is online, single-pass and supervised method that is based on fuzzy Min-Max neural network classifier with compensatory neurons. In this method for handling overlapping regions that mainly are created in borders, a modified compensatory nod with a radios-based transition function is used which increases the classification accuracy in discriminating cases. On contract of modifications in the structure of the algorithm, time and space complexity of the algorithm has been decreased and experimental results show that the proposed method is less sensitive to external parameters that are provided by user.
机译:提出了一种新的模糊最小-最大分类器,该分类器使用修正的补偿神经元。所提出的分类器是一种基于模糊最小-最大神经网络分类器的具有补偿神经元的在线,单遍和监督方法。在这种用于处理主要在边界中创建的重叠区域的方法中,使用了带有基于无线电的转换函数的改进补偿点,该方法在区分情况下提高了分类精度。通过对算法结构的修改,降低了算法的时间和空间复杂度,实验结果表明,该方法对用户提供的外部参数不敏感。

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