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Bayesian selective combination of multiple neural networks for improving long-range predictions in nonlinear process modelling

机译:多个神经网络的贝叶斯选择性组合可改善非线性过程建模中的远程预测

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摘要

A Bayesian selective combination method is proposed for combining multiple neural networks in nonlinear dynamic process modelling. Instead of using fixed combination weights, the probability of a particular network being the true model is used as the combination weight for combining that network. The prior probability is calculated using the sum of squared errors of individual networks on a sliding window covering the most recent sampling times. A nearest neighbour method is used for estimating the network error for a given input data point, which is then used in calculating the combination weights for individual networks. Forward selection and backward elimination are used to select the individual networks to be combined. In forward selection, individual networks are gradually added into the aggregated network until the aggregated network error on the original training and testing data sets cannot be further reduced. In backward elimination, all the individual networks are initially aggregated and some of the individual networks are then gradually eliminated until the aggregated network error on the original training and testing data sets cannot be further reduced. Application results demonstrate that the proposed techniques can significantly improve model generalisation and perform better than aggregating all the individual networks.
机译:提出了一种在非线性动态过程建模中组合多个神经网络的贝叶斯选择性组合方法。代替使用固定的组合权重,将特定网络为真实模型的概率用作组合该网络的组合权重。使用覆盖最近采样时间的滑动窗口上单个网络的平方误差总和来计算先验概率。最近邻居方法用于估计给定输入数据点的网络错误,然后将其用于计算各个网络的组合权重。前向选择和后向消除用于选择要组合的单个网络。在正向选择中,各个网络逐渐添加到聚合网络中,直到无法进一步减少原始训练和测试数据集上的聚合网络错误为止。在向后消除中,首先对所有单个网络进行聚合,然后逐步消除某些单个网络,直到无法进一步减少原始训练和测试数据集上的聚合网络错误为止。应用结果表明,所提出的技术可以显着改善模型泛化,并且比聚合所有单个网络的性能更好。

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