首页> 外文期刊>Expert Systems >Improving efficiency of merging symbolic rules into integrated rules: splitting methods and mergability criteria
【24h】

Improving efficiency of merging symbolic rules into integrated rules: splitting methods and mergability criteria

机译:提高将符号规则合并为集成规则的效率:拆分方法和可合并性标准

获取原文
获取原文并翻译 | 示例
           

摘要

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 and provide explanations for reached conclusions. 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. Because of the inability of the adaline unit to handle inseparability, more than one neurule for each conclusion may be produced by splitting the initial set of symbolic rules into subsets. This paper presents research work improving the conversion process in terms of runtime and number of produced neurules. First, we show how easier it is to construct a neurule base than a connectionist one. Second, we present alternative rule set splitting methods. Finally, we define criteria concerning the ability or inability to convert a rule set into a single, equivalent, but more compact rule. With application of such mergability criteria, the conversion process of symbolic rules into neurules becomes more time-efficient. All the aforementioned are supported by experimental results.
机译:神经元是一种将神经计算和生产规则整合在一起的神经符号规则。每个神经元都被表示为一个ADA单元。神经元表现出诸如模块化,自然性和执行交互式和综合性推论的能力等特征,并为得出的结论提供解释。产生神经碱基的一种方法是通过转换现有的符号规则库来产生等效但更紧凑的规则库。转换过程将具有相同结论的符号规则合并到一个或多个神经元中。由于adaline单元无法处理不可分割性,因此可以通过将符号规则的初始集合划分为子集来为每个结论生成多个神经元。本文介绍了在运行时间和生产的神经元数量方面改善转换过程的研究工作。首先,我们展示了构建神经基础比连接主义者更容易。其次,我们提出了替代规则集拆分方法。最后,我们定义有关将规则集转换为单个,等效但更紧凑的规则的能力的标准。通过应用这种可合并性标准,将符号规则转换为神经元的过程变得更加省时。上述所有内容均得到实验结果的支持。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号