预测金融时间序列的神经网络设计参数

A. Lasfer, H. El-Baz, I. Zualkernan
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引用次数: 12

摘要

神经网络(NN)已被研究人员和从业人员广泛用于预测金融时间序列。神经网络的预测精度取决于几个设计参数,对它们进行微调以适应特定的金融时间序列对于获得更低的误差水平和最小化运行时间至关重要。本文介绍了一个两水平全因子实验设计的结果,该实验设计旨在研究影响神经网络预测金融时间序列性能的重要因素。本文考虑的因素包括神经网络类型、隐藏层神经元数量、LM算法的学习率以及输出层传递函数的类型。该方法适用于阿拉伯联合酋长国的摩根士丹利资本国际指数。
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Neural Network design parameters for forecasting financial time series
Neural Networks (NN) have been used extensively by researchers and practitioners to forecast financial time series. The forecasting accuracy of NN depends on several design parameters, and fine-tuning them to suit a particular financial time series is essential for attaining lower error levels and minimizing running time. This paper presents the results of a two-level full-factorial Design of Experiment developed to investigate the significant factors that influence the performance of NN in forecasting financial time series. The factors considered in this paper are NN type, number of neurons in the hidden layer, the learning rate of LM algorithm, and the type of output layer transfer function. The methodology is applied to the Morgan Stanley Capital International Index for United Arab Emirates.
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