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The Short-Range Precipitation Forecasting Method of Neural Network Based on Principal Component Analysis

机译:基于主成分分析的神经网络短程降水预测方法

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The goal of this paper is to study the factors that affect the generalization capability and real-time learning for neural network. First, this paper investigates the effect of initial weight ranges, learning rate, and regularization coȁ4;efficient on generalization capability and learning speed. Based on this, this paper proposes a hybrid method that simultaneously considers these three factors, and dynamically tunes the learning rate and regularization coefficient. Then the paper presents the results of some experimental comparison among these kinds of methods in several different problems. Finally, it draws conclusions and makes plan for future work.
机译:本文的目的是研究影响神经网络泛化能力和实时学习的因素。首先,本文研究了初始权重范围,学习率和正则化系数ȁ4对泛化能力和学习速度的影响。基于此,本文提出了一种同时考虑这三个因素,并动态调整学习率和正则化系数的混合方法。然后,本文介绍了这些方法在几个不同问题上的一些实验比较结果。最后,它得出结论并为将来的工作制定计划。

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