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Artificial Neural Networks Design to Simulate, Predict and Control Processes: Requirements and Example. Case of Architecture Optimization by Optimal Brain Surgeon

机译:人工神经网络设计以模拟,预测和控制过程:要求和示例。最佳脑外科医生优化架构的案例

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Artificial neural networks (ANN) is a mathematical model which offers the possibility to develop such a global and integrated approach, without providing any physical explanation for the relationships that have to be validated from a physical point of view. The design of neural networks structures is an important problem for ANN applications which is difficult to solve theoretically. The definition of optimal network architecture for any particular problem is quite difficult and remains an open problem. This work intends to describe a pruning method to optimize the architecture: optimal brain surgeon (OBS). This method balances the accuracy and the time complexity to achieve better neural networks performance. In order to validate the approach, results need to be consistent with experimental data and the rather large tolerance permits the applicability of the methodology. Root mean square error (RMSE) values were small (i.e. < 0.05), thus the network output for each test pattern was relatively close to the respective targets.nnArtificial neural network is a powerful statistical procedure permitting to relate the parameter of a given problem to its desired result by considering a complex network of neurons. The ANN architecture (neurons number on hidden layer, weights connection, etc.) optimization was pruned by OBS. This method deleted and adjusted weights within a reasonable time, while the unit-OBS method accelerated convergence by deleting one neuron at a time.
机译:人工神经网络(ANN)是一种数学模型,它提供了开发这种全局和集成方法的可能性,而无需为必须从物理角度验证的关系提供任何物理解释。神经网络结构的设计是人工神经网络应用的一个重要问题,理论上难以解决。对于任何特定问题,最佳网络体系结构的定义都是相当困难的,并且仍然是一个未解决的问题。这项工作旨在描述一种优化架构的修剪方法:最佳脑外科医生(OBS)。该方法在准确性和时间复杂度之间取得平衡,以实现更好的神经网络性能。为了验证该方法,结果必须与实验数据保持一致,并且较大的公差允许该方法的适用性。均方根误差(RMSE)值很小(即<0.05),因此每个测试模式的网络输出都相对接近于各自的目标。人工神经网络是一种强大的统计程序,可以将给定问题的参数与通过考虑复杂的神经元网络来获得理想的结果。 OBS修剪了ANN架构(隐藏层上的神经元数,权重连接等)优化。该方法在合理的时间内删除并调整了权重,而unit-OBS方法通过一次删除一个神经元来加速收敛。

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