首页> 外文会议>Mexican International Conference on Artificial Intelligence(MICAI 2006); 20061113-17; Apizaco(MX) >Genetic Optimizations for Radial Basis Function and General Regression Neural Networks
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Genetic Optimizations for Radial Basis Function and General Regression Neural Networks

机译:径向基函数和广义回归神经网络的遗传优化

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The topology of a neural network has a significant importance on the network's performance. Although this is well known, finding optimal configurations is still an open problem. This paper proposes a solution to this problem for Radial Basis Function (RBF) networks and General Regression Neural Network (GRNN) which is a kind of radial basis networks. In such networks, placement of centers has significant effect on the performance of network. The centers and widths of the hidden layer neuron basis functions are coded in a chromosome and these two critical parameters are determined by the optimization using genetic algorithms. Thyroid, iris and escherichia coli bacteria datasets are used to test the algorithm proposed in this study. The most important advantage of this algorithm is getting succesful results by using only a small part of a benchmark. Some numerical solution results indicate the applicability of the proposed approach.
机译:神经网络的拓扑结构对网络的性能至关重要。尽管这是众所周知的,但是找到最佳配置仍然是一个未解决的问题。针对径向基函数网络(RBF)和通用回归神经网络(GRNN),本文提出了解决方案。在这样的网络中,中心的位置对网络的性能有重要影响。隐藏层神经元基础函数的中心和宽度被编码在一条染色体中,并且这两个关键参数是通过使用遗传算法进行优化确定的。甲状腺,虹膜和大肠杆菌细菌数据集用于测试本研究中提出的算法。该算法最重要的优点是仅使用基准的一小部分即可获得成功的结果。一些数值解结果表明了该方法的适用性。

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