A Region Reproduction Algorithm for Optimization of Neural Networks

Ya-ou Zhao, Yuehui Chen, Wei Li
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Abstract

Among the research of artificial neural networks, the most important problem is how to select the appropriate parameters for an artificial neural network. In this paper, a new evolutionary algorithm called region reproduction algorithm (RRA) is introduced to optimize the parameters of neural networks. The algorithm firstly generates some regions in space and then the offspring in the region is reproduced by the fitness in the superior regions. Because the algorithm is more concerned in the superior regions, it has more probability to find the optimal than traditional algorithms. Experiments for the Apple stock price data and Dell stock price data shows that our proposed RRA-NN model performed better than the traditional GA-NN model and can give much faster learning speed.
神经网络优化的区域再现算法
在人工神经网络的研究中,最重要的问题是如何为人工神经网络选择合适的参数。本文提出了一种新的进化算法——区域复制算法(RRA)来优化神经网络的参数。该算法首先在空间中生成一定的区域,然后利用优越区域的适应度来繁殖该区域内的后代。由于该算法更关注优越区域,因此比传统算法有更大的概率找到最优解。对苹果股票价格数据和戴尔股票价格数据的实验表明,我们提出的RRA-NN模型比传统的GA-NN模型性能更好,并且可以提供更快的学习速度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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