Tolat V V
Department of Electrical Engineering, Stanford University, CA 94305.
Biol Cybern. 1990;64(2):155-64. doi: 10.1007/BF02331345.
In this paper a new method for analyzing Kohonen's self-organizing feature maps is presented. The method makes use of a system of energy functions, one energy function for each processing unit. It is shown that the training process is equivalent to minimizing each energy function subject to constraints. The analysis is used to prove the formation of topologically correct maps when the inherent dimensionality of the input patterns matches that of the network. The energy equations can be used to compute the steady-state weight values of the network. In addition, the analysis allows bounds on the training parameters to be determined. Finally, examples of energy landscapes are presented to graphically show the behavior of the network.
本文提出了一种分析科霍宁自组织特征映射的新方法。该方法利用了一个能量函数系统,每个处理单元对应一个能量函数。结果表明,训练过程等同于在约束条件下使每个能量函数最小化。当输入模式的固有维度与网络的维度相匹配时,该分析用于证明拓扑正确映射的形成。能量方程可用于计算网络的稳态权重值。此外,该分析还可以确定训练参数的界限。最后,给出了能量景观的示例,以直观展示网络的行为。