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Efficiently Merging Symbolic Rules into Integrated Rules

机译:有效地将符号规则合并为综合规则

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Neurules are a type of neuro-symbolic rules integrating neurocomputing and production rules. Each neurule is represented as an adaline unit. Neurules exhibit characteristics such as modularity, naturalness and ability to perform interactive and integrated inferences. One way of producing a neurule base is through conversion of an existing symbolic rule base yielding an equivalent but more compact rule base. The conversion process merges symbolic rules having the same conclusion into one or more neurules. Due to the inability of the adaline unit to handle inseparability, more than one neurule for each conclusion may be produced. In this paper, we define criteria concerning the ability or inability to convert a rule set into a single neurule. Definition of criteria determining whether a set of symbolic rules can (or cannot) be converted into a single, equivalent but more compact rule is of general representational interest. With application of such criteria, the conversion process of symbolic rules into neurules becomes more time-and space-efficient by omitting useless trainings. Experimental results are promising.
机译:神经抑制是一种整合神经关联和生产规则的神经象征规则。每种神经元素表示为亚氨基单元。神经尿表现出诸如模块化,自然度和执行互动和综合推论的能力等特征。产生神经群的一种方法是通过转换现有的符号规则库,产生等效但更紧凑的规则库。转换过程合并具有相同结论的符号规则在一个或多个神经中。由于亚葡萄酒单位能够处理不可透,可以产生多于一个结论的神经尿。在本文中,我们定义了有关能力或无法将规则设置成单个神经元素的能力或无法进行的标准。标准的定义确定是否可以将一组符号规则(或不能)转换为单个等效但更紧凑的规则是普遍代表性的兴趣。通过应用此类标准,通过省略无用的培训,符号规则转换为神经元的转换过程变得更加时间和空间效率。实验结果很有前景。

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