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Design Of Ensemble Neural Network Using The Akaike Information Criterion

机译:基于赤池信息准则的集成神经网络设计

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Ensemble neural networks are commonly used networks in many engineering applications due to its better generalization property. In this paper, an ensemble neural network algorithm is proposed based on the Akaike information criterion (AIC). The AlC-based ensemble neural network searches the best weight configuration of each component network first, and uses the AIC as an automating tool to find the best combination weights of the ensemble neural network. Two analytical functions-the peak function and the Friedman function are used first to assess the accuracy of the proposed ensemble approach. The verified approach is then applied to a material modeling problem-the stress-strain-time relationship of mudstones. These computational experiments have verified that the AlC-based ensemble neural network outperforms both the simple averaging ensemble neural network and the single component neural network.
机译:集成神经网络由于其更好的泛化特性而在许多工程应用中是常用的网络。本文提出了一种基于Akaike信息准则(AIC)的集成神经网络算法。基于AlC的集成神经网络首先搜索每个组件网络的最佳权重配置,然后使用AIC作为自动化工具来查找集成神经网络的最佳组合权重。首先使用两个解析函数-峰值函数和Friedman函数来评估所提出的集成方法的准确性。经验证的方法随后应用于材料建模问题-泥岩的应力-应变-时间关系。这些计算实验证明,基于AlC的集成神经网络的性能优于简单的平均集成神经网络和单成分神经网络。

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