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A Two-Stage Exact Algorithm for Optimization of Neural Network Ensemble

机译:神经网络集合优化的两阶段精确算法

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We study optimization problems where the objective function is modeled through feedforward neural networks. Recent literature has explored the use of a single neural network to model either uncertain or complex elements within an objective function. However, it is well known that ensembles can produce more accurate and more stable predictions than single neural network. We therefore study how neural network ensemble can be incorporated within an objective function, and propose a two-stage optimization algorithm for solving the ensuing optimization problem. Preliminary computational results applied to a global optimization problem and a real-world data set show that the two-stage model greatly outperforms a standard adaptation of previously proposed MIP formulations of single neural network embedded optimization models.
机译:我们研究通过前馈神经网络建模客观函数的优化问题。 最近的文献已经探讨了单一神经网络的使用来模拟目标函数内的不确定或复杂元素。 然而,众所周知,集合可以产生比单个神经网络更准确和更稳定的预测。 因此,我们研究神经网络集合如何在客观函数内结合,并提出了一种用于解决随后的优化问题的两级优化算法。 初步计算结果适用于全球优化问题,实际数据集显示,两级模型大大优于先前提出的单个神经网络嵌入式优化模型的标准调整。

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