混合属性分类的改进模糊超线段神经网络

S. Shinde, U. Kulkarni
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引用次数: 6

摘要

模糊超线段神经网络(FHLSNN)利用模糊集作为模式类,其中每个模糊集是模糊集超线段的并集。模糊集超线段是由两个端点定义的n维超线段,并具有相应的隶属函数。在FHLSNN中,隶属函数根据输入模式与超线段两端的距离计算输入模式的隶属度值。但有时输入模式离超线段较近,但离其端点较远。为了解决这一问题,本文提出了改进模糊超线段神经网络(MFHLSNN)。在MHLSNN中,隶属度函数是基于输入模式到超线段中点的距离及其到两个端点的距离的最小值。提出的模型应用于从UCI机器学习存储库中获取的八个不同的基准数据集。将MFHLSNN的实验结果与模糊最小最大神经网络、广义模糊最小最大神经网络和模糊超线段神经网络进行了比较。这些结果表明,与之前的方法相比,MFHLSNN具有更高的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modified fuzzy hyperline-segment neural network for classification with mixed attribues
The fuzzy hyperline segment neural network (FHLSNN) utilizes fuzzy sets as pattern classes in which each fuzzy set is an union of fuzzy set hyperline segments. The fuzzy set hyperline segment is a n-dimensional hyperline segment defined by two end points with a corresponding membership function. In FHLSNN, membership function calculates membership value of the input pattern based on its distance from both the end points of the hyperline segment. But sometimes input pattern is nearer to the hyperline segment but far from its endpoints. To solve this problem, this paper proposes modified fuzzy hyperline segment neural network (MFHLSNN). In MHLSNN membership function is based on minimum of the distance of the input pattern from the midpoint of the hyperline segment and its distance from both the end points. The proposed model is applied to eight different benchmark datasets taken from the UCI machine learning repository. The experimental results of the MFHLSNN are compared with earlier methods like fuzzy min-max neural network, generalized fuzzy min-max neural network and fuzzy hyperline segment neural network. These results show that the MFHLSNN gives improved performance as compared to its earlier methods.
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