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Theoretical and Empirical Analysis of the Learning Rate and Momentum Factor in Neural Network Modeling for Stock Prediction

机译:神经网络股票预测模型中学习率和动量因子的理论和实证分析

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摘要

Neural Network training requires a large number of learning epochs. An appropriate learning rate is important to the overall performance of the training. Under a weight-update algorithm, a low learning rate would make the network learning slowly, and a high learning rate would make the weights and error function diverge. To optimize the model parameters, this paper presents theoretical and empirical analysis of learning rate in neural network modeling for its application in stock price prediction, an increasing learning rate approach is suggested for practice. The effect of momentum factor is also investigated to speed up the convergence for network training.
机译:神经网络训练需要大量的学习纪元。适当的学习率对培训的整体绩效很重要。在权重更新算法下,低学习率会使网络学习缓慢,而高学习率会使权重和误差函数发散。为了优化模型参数,本文提出了学习率在神经网络建模中的理论和经验分析,并将其应用于股票价格预测中,并提出了一种提高学习率的方法。还研究了动量因子的影响,以加快网络训练的收敛速度。

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