具有真值限制的自组织高斯模糊CMAC

M. N. Nguyen, D. Shi, Hiok Chai Quek
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引用次数: 14

摘要

小脑模型衔接控制器(CMAC)是一种流行的自关联记忆前馈神经网络模型。自提出以来,许多研究者将模糊逻辑引入到CMAC中,并将其称为FCMAC。在FCMAC中,输入数据被模糊化成模糊集后再被送入CMAC。本文提出了自组织模糊化技术,在模糊化阶段形成模糊集。该方法利用未经预处理的训练数据集的原始数值,在不知道聚类数量的情况下获得基于动态分区的聚类。它还为CMAC提供了一个一致的模糊规则库。在去模糊化阶段采用真值限制推理方案(TVR)。我们在一些基准数据集上进行了实验,结果表明我们的方法优于现有模型,在推理过程中具有更高的处理不确定性的能力
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Self-Organizing Gaussian Fuzzy CMAC with Truth Value Restriction
The cerebellar model articulation controller (CMAC) is a popular auto-associate memory feed forward neural network model. Since it was proposed, many researchers have introduced fuzzy logic to CMAC and called FCMAC. In FCMAC, the input data is fuzzificated into fuzzy sets before fed into CMAC. This paper proposes self-organizing fuzzification (SOF) technique to form fuzzy sets in the fuzzification phase. The proposed SOF technique uses raw numerical values of a training data set with no preprocessing and obtains dynamic partition-base clusters without prior knowledge of number of clusters. It also provides CMAC a consistent fuzzy rule base. Truth value restriction inference scheme (TVR) is employed in the defuzzification phase. Our experiments are conducted on some benchmark datasets, and the results show that our method outperforms the existing model with higher ability to handle uncertainty in the inference process
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