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Discussions of neural network solvers for inverse optimization problems

机译:神经网络求解器反优化问题的讨论

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We discuss a neural network solver for the inverse optimization problem. The problem is that input/teaching data include defects, and predict the defect values, and estimate functional relation between the input/output data. The network structure of the solver is series-connected three-layer neural networks. Information propagates among the networks alternatively, and the defects are complemented by the correlations among data. On ideal structure-activity data, we could make the prediction within 0.17-3.6% error.
机译:我们讨论了一个神经网络求解器,用于逆优化问题。问题是输入/教学数据包括缺陷,并预测缺陷值,并估计输入/输出数据之间的功能关系。求解器的网络结构是串联的三层神经网络。信息替代地,信息在网络中传播,并且缺陷由数据之间的相关性互补。在理想的结构活动数据上,我们可以在0.17-3.6%的错误内进行预测。

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