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An analysis of the metric structure of the weight space of feedforward networks and its application to time series modeling and prediction

机译:馈电网络重量空间的度量结构分析及其在时间序列建模和预测中的应用

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We study symmetries of feedforward networks in terms of their corresponding groups. We find that these groups naturally act on and partition weight space into disjunct domains. We derive an algorithm to generate representative weight vectors in a fundamental domain. The analysis of the metric structure of the fundamental domain leads to improved evaluation procedures of learning results, such as local error bars estimated using maximum-likelihood and bootstrap methods. It can be implemented effciently even for large networks. We demonstrate the approach in th4e area of nonlinear time series modeling and prediction.
机译:我们根据相应的群体研究前馈网络的对称性。我们发现这些群体自然地行动和分区重量空间分离域。我们推出了一种在基本域中生成代表权重向量的算法。基本域的度量结构的分析导致了改进了学习结果的评估程序,例如使用最大可能性和引导方法估计的本地误差条。即使对于大型网络,它也可以生效。我们展示了非线性时间序列建模和预测的Th4E区域中的方法。

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