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首页> 外文期刊>The international arab journal of information technology >Financial Time Series Forecasting Using Hybrid Wavelet-Neural Model
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Financial Time Series Forecasting Using Hybrid Wavelet-Neural Model

机译:混合小波神经网络模型的金融时间序列预测

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摘要

In this paper, we examine and discuss results of financial time series prediction by using a combination of wavelet transform, neural networks and statistical time series analytical techniques. The analyzed hybrid model combines the capabilities of wavelet packet transform and neural networks that can capture hidden but crucial structure attributes embedded in the time series. The input data is decomposed into a wavelet representation using two different resolution levels. For each of the new time series, a neural network is created, trained and used for prediction. In order to create an aggregate forecast, the individual predictions are combined with statistical features extracted from the original input. Additional to the conclusion that the increase in resolution level does not improve the prediction accuracy, the analysis of obtained results indicates that the suggested model presents satisfactory predictor. The results also serve as an indication that denoising process generates more accurate results when applied.
机译:在本文中,我们结合小波变换,神经网络和统计时间序列分析技术,研究并讨论了金融时间序列预测的结果。分析的混合模型结合了小波包变换和神经网络的功能,可以捕获嵌入在时间序列中的隐藏但至关重要的结构属性。使用两个不同的分辨率级别将输入数据分解为小波表示。对于每个新的时间序列,都会创建,训练并使用神经网络进行预测。为了创建汇总预测,将各个预测与从原始输入中提取的统计特征进行组合。除了分辨率级别的提高不会提高预测准确性的结论外,对所得结果的分析还表明,所建议的模型提供了令人满意的预测因子。结果还表明,在应用降噪处理后会产生更准确的结果。

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