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A Linguistic CMAC vs. a Linguistic Decision Tree for Decision Making

机译:语言CMAC与决策决策树的语言与语言决策树

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Cerebellar Model Articulation Controller (CMAC) belongs to the family of feed-forward networks with a single linear trainable layer. A CMAC has the feature of fast learning, and is suitable for modeling any non-linear relationship. Combining label semantics and an original CMAC, a linguistic CMAC based on Mass Assignment on labels is proposed to map the relationship between the attributes and the goal variable that is often highly nonlinear. Linguistic Decision Trees based on label semantics have been used as a decision maker in many areas. A linguistic decision tree presents information propagation from input attributes to a goal variable based on transparent linguistic rules. The proposed LCMAC model is functionally equivalent to a linguistic decision tree, and takes the advantage of fast local training of the original CMAC and the advantage of transparency of a linguistic decision tree.
机译:小脑模型铰接控制器(CMAC)属于具有单个线性可训制层的前馈网络系列。 CMAC具有快速学习的特征,并且适用于建模任何非线性关系。组合标签语义和原始CMAC,提出了一种基于标签上的质量分配的语言CMAC来映射属性与往往是高度非线性的目标变量之间的关系。基于标签语义的语言决策树已被用作许多领域的决策者。语言决策树基于透明语言规则将从输入属性的信息传播提供给目标变量的信息传播。所提出的LCMAC模型在功能上等同于语言决策树,并利用了原始CMAC的快速本地训练和语言决策树的透明度的优势。

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