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Research and application of SOM neural network which based on kernel function

机译:基于核函数的SOM神经网络的研究与应用

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In this paper, we proposed a SOM neural network which based on kernel function. It adopts kernel function to replace Euclidean distance, and take it as one criterion to estimate the matching degree between the input pattern and the connection weight. It accumulates knowledge by the process of learning to the input pattern and connection weight adjustment. It is unsupervised learning, it has the ability of self-learning, self-adaptive and self-stability. It has shown fascinating characteristic when being used in silicon content prediction of molten iron.
机译:本文提出了一种基于核函数的SOM神经网络。它采用核函数代替欧几里得距离,并以此为标准来估计输入模式与连接权重之间的匹配度。它通过学习输入模式和连接权重调整的过程来积累知识。它是无监督的学习,具有自我学习,自适应和自我稳定的能力。当用于铁水硅含量预测时,它表现出令人着迷的特性。

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