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Using genetic algorithms to improve the search of the weight space in cascade-correlation neural network

机译:使用遗传算法改善级联相关神经网络权空间的搜索

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In this paper, we use the global search characteristics of genetic algorithms to help search the weight space of the neurons in the cascade-correlation architecture. The cascade-correlation learning architecture is a technique of training and building neural networks that starts with a simple network of neurons and adds additional neurons as they are needed to suit a particular problem. In our approach, instead of modifying the genetic algorithm to account for convergence problems, we search the weight-space using the genetic algorithm and then apply the gradient technique of Quickprop to optimize the weights. This hybrid algorithm which is a combination of genetic algorithms and cascade-correlation is applied to the two spirals problem. We also use our algorithm in the prediction of the cyclic oxidation resistance of Ni- and Co-base superalloys.
机译:在本文中,我们使用遗传算法的全局搜索特征来帮助搜索级联相关架构中神经元的权重空间。级联相关学习体系结构是一种训练和构建神经网络的技术,该技术从简单的神经元网络开始,并根据需要添加其他神经元以适应特定问题。在我们的方法中,我们没有修改遗传算法来解决收敛问题,而是使用遗传算法搜索权重空间,然后应用Quickprop的梯度技术来优化权重。这种混合算法是遗传算法和级联相关的组合,被应用于两个螺旋问题。我们还将算法用于预测镍基和钴基高温合金的循环抗氧化性。

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