On a Learning Method of the SIC Fuzzy Inference Model with Consequent Fuzzy Sets

Genki Ohashi, Hirosato Seki, M. Inuiguchi
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引用次数: 0

Abstract

In the conventional fuzzy inference models, various learning methods have been proposed. It is generally impossible to apply the steepest descent method to fuzzy inference models with consequent fuzzy sets, such as Mamdani's fuzzy inference model because it uses min and max operations in the inference process. Therefore, the Genetic Algorithm (GA) was useful for learning of the above model. In addition, it has been also proposed the method for obtaining fuzzy rules of the fuzzy inference models unified max operation from the steepest descent method by using equivalence property. On the other hand, Single Input Connected (SIC) fuzzy inference model can set a fuzzy rule of 1 input 1 output, so the number of rules can be reduced drastically. In the learning method of SIC model unified max operation with consequent fuzzy sets, GA was only applied to the model. Therefore, this paper proposes a leaning method of SIC model unified max operation with consequent fuzzy sets by using equivalence. Moreover, the proposed method is applied to a medical diagnosis and compared with the SIC model by using GA.
带有后向模糊集的SIC模糊推理模型的学习方法
在传统的模糊推理模型中,提出了各种学习方法。由于最陡下降法在推理过程中使用最小和最大运算,因此一般无法将最陡下降法应用于具有顺次模糊集的模糊推理模型,如Mamdani的模糊推理模型。因此,遗传算法(GA)对上述模型的学习是有用的。此外,还提出了利用等价性从最陡下降法得到模糊推理模型统一最大运算的模糊规则的方法。另一方面,单输入连接(SIC)模糊推理模型可以设置1输入1输出的模糊规则,因此可以大大减少规则的数量。在SIC模型统一极大运算与后向模糊集的学习方法中,遗传算法仅应用于模型。为此,本文提出了一种基于等价性的SIC模型统一极大运算与后向模糊集的学习方法。将该方法应用于医学诊断,并与遗传算法的SIC模型进行了比较。
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