利用聚类技术改进神经网络在金融时间序列预测中的应用

Fen Liu, Peng Du, Fangfei Weng, Jun Qu
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引用次数: 13

摘要

本文研究了一种利用聚类改进神经网络的时间序列预测方法。通过聚类,将大数据组分成一些小的部分。通过这种方式,每个小部件都具有较高的一致性,并使用这些小部件中的数据来训练相应的神经网络进行预测。该预测模型是在神经网络的基础上加入聚类方法构建的,并应用于金融时间序列的预测。实验结果证明了改进的有效性。与原始神经网络预测模型的比较表明,聚类提高了神经网络在连续预测中的趋势精度,同时降低了预测模型的时间成本和复杂性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Use clustering to improve neural network in financial time series prediction
In this paper, a time series prediction method using clustering to improve neural network is studied. The big data group is divided into some small parts by clustering. By this way, every small part has a higher conformity, and data in these small parts is used to train corresponding neural network for prediction. The prediction model is constructed from neural network with the addition of clustering and is applied to the financial time series prediction. The experiment results demonstrate the effectiveness of the improvement. Comparison with the primitive neural network prediction model shows that clustering increases neural network's trend accuracy in continuous prediction, while debasing the cost of time and reducing the complexity of the prediction model.
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