文章摘要
刘燕,杨洁,李龙.带递归的模糊感知器有限收敛性[J].,2011,(6):933-936
带递归的模糊感知器有限收敛性
Finite convergence for recurrent fuzzy perceptron
  
DOI:10.7511/dllgxb201106025
中文关键词: 模糊感知器  递归  有限收敛性  模糊可分
英文关键词: fuzzy perceptron  recurrent  finite convergence  fuzzily separable
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作者单位
刘燕,杨洁,李龙  
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中文摘要:
      模糊感知器的主要功能是通过权值的学习来判别样本所属的类别.对一种基于模糊逻辑运算的带递归的模糊感知器进行了研究,其网络结构类似于内部运算基于加法-乘法的传统感知器, 并加入了动态递归项 设定网络的初始权值均为常数0, 证明了若训练样本的输入向量维数为2,在样本模糊可分条件下, 学习算法有限收敛, 即有限步后权值的训练停止;若训练样本的输入向量维数大于2, 在稍强的条件下,学习算法也有限收敛
英文摘要:
      The main function of fuzzy perceptron is to discriminate which categories the samples are in by weight learning. An algorithm for a recurrent fuzzy perceptron based on fuzzy logic is presented, and the network structure of the recurrent fuzzy perceptron is similar to traditional perceptron based on addition- production, and the dynamic recursion term is added. Initial weights of network are set to be constant zero, in the case where the dimension of the input vectors is two and the training examples are separable, its finite convergence is proved, i.e., the training procedure for the network weights will stop in finite steps, and when the dimension is greater than two, stronger conditions are needed to guarantee the finite convergence.
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