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Fuzzy classifications using fuzzy inference networks

机译:使用模糊推理网络的模糊分类

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In this paper, fuzzy inference models for pattern classifications have been developed and fuzzy inference networks based on these models are proposed. Most of the existing fuzzy rule-based systems have difficulties in deriving inference rules and membership functions directly from training data. Rules and membership functions are obtained from experts. Some approaches use backpropagation (BP) type learning algorithms to learn the parameters of membership functions from training data. However, BP algorithms take a long time to converge and they require an advanced setting of the number of inference rules. The work to determine the number of inference rules demands lots of experiences from the designer. In this paper, self-organizing learning algorithms are proposed for the fuzzy inference networks. In the proposed learning algorithms, the number of inference rules and the membership functions in the inference rules will be automatically determined during the training procedure. The learning speed is fast. The proposed fuzzy inference network (FIN) classifiers possess both the structure and the learning ability of neural networks, and the fuzzy classification ability of fuzzy algorithms. Simulation results on fuzzy classification of two-dimensional data are presented and compared with those of the fuzzy ARTMAP. The proposed fuzzy inference networks perform better than the fuzzy ARTMAP and need less training samples.
机译:本文建立了模式分类的模糊推理模型,并提出了基于这些模型的模糊推理网络。现有的大多数基于模糊规则的系统都难以直接从训练数据中得出推理规则和隶属函数。规则和成员资格功能是从专家那里获得的。一些方法使用反向传播(BP)类型的学习算法来从训练数据中学习隶属函数的参数。但是,BP算法需要很长时间才能收敛,并且需要对推理规则数量进行高级设置。确定推理规则数量的工作需要设计人员丰富的经验。本文提出了一种用于模糊推理网络的自组织学习算法。在提出的学习算法中,将在训练过程中自动确定推理规则的数量和推理规则中的隶属函数。学习速度快。提出的模糊推理网络分类器既具有神经网络的结构和学习能力,又具有模糊算法的模糊分类能力。给出了二维数据模糊分类的仿真结果,并与模糊ARTMAP的仿真结果进行了比较。所提出的模糊推理网络的性能优于模糊ARTMAP,并且需要的训练样本更少。

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