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Minimizing Global Error in an Artificial Neural Network

机译:最大限度地减少人工神经网络中的全局误差

摘要

Computer systems, machine-implemented methods, and stored instructions are provided for minimizing an approximate global error in an artificial neural network that is configured to predict model outputs based at least in part on one or more model inputs. A model manager stores the artificial neural network model. The model manager may then minimize an approximate global error in the artificial neural network model at least in part by causing evaluation of a mixed integer linear program that determines weights between artificial neurons in the artificial neural network model. The mixed integer linear program accounts for piecewise linear activation functions for artificial neurons in the artificial neural network model. The mixed integer linear program comprises a functional expression of a difference between actual data and modeled data, and a set of one or more constraints that reference variables in the functional expression.
机译:提供了用于最小化人工神经网络中的近似全局误差的计算机系统,机器实现的方法和存储的指令,该人工神经网络被配置为至少部分地基于一个或多个模型输入来预测模型输出。模型管理器存储人工神经网络模型。然后,模型管理器可以至少部分地通过引起对混合整数线性程序的评估来最小化人工神经网络模型中的近似全局误差,该混合整数线性程序确定人工神经网络模型中的人工神经元之间的权重。混合整数线性程序说明了人工神经网络模型中人工神经元的分段线性激活函数。混合整数线性程序包括实际数据和建模数据之间的差异的函数表达式,以及一组引用函数表达式中变量的一个或多个约束。

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