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Interpretation of first-order recurrent neural networks by means of fuzzy rules

机译:通过模糊规则解读一阶经常性神经网络

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First-order recurrent neural networks can be trained to recognize strings of a regular language. Finite state automata can be extracted from these neural networks. Normally, a search process in the output domain of the neurons is necessary for carrying out this extraction procedure. On the other hand, studies about fuzzy rules extraction from feedforward multilayered neural networks can be considered to define new techniques that transform first-order recurrent neural networks into finite state automata. With these new techniques, a fuzzy description of the action of each neuron can be obtained. From these descriptions, the transition function of the automaton can be directly found and, in this way, the search process is not necessary. A technique with this approach is presented in this paper. Besides, the used method to extract fuzzy rules from a neuron has the advantage that the inputs of the fuzzy system coincide with the inputs of the neuron. Thus, the fuzzy system is more intuitive. Once the transition function is obtained, the automaton structure can be found with the analysis of the transitions for every state and input from the initial state. Finally, several examples are presented to illustrate the method.
机译:可以培训一阶经常性神经网络以识别常规语言的字符串。可以从这些神经网络中提取有限状态自动机。通常,在进行该提取过程的情况下,神经元的输出域中的搜索过程是必要的。另一方面,可以考虑从馈通多层神经网络提取的模糊规则的研究定义了将一阶经常性神经网络转换为有限状态自动机的新技术。利用这些新技术,可以获得对每个神经元的动作的模糊描述。根据这些描述,可以直接找到自动机的转换功能,并以这种方式,不需要搜索过程。本文提出了一种具有这种方法的技术。此外,从神经元提取模糊规则的使用方法具有以下优点:模糊系统的输入与神经元的输入重合。因此,模糊系统更直观。一旦获得转换功能,就可以通过分析每个状态的转换和从初始状态输入的分析来找到自动机结构。最后,提出了几个例子以说明该方法。

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