A Strategy Integrating Iterative Filtering and Convolution Neural Network for Time Series Feature Extraction

Feng Zhou, Liu Jiang
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Abstract

Time series processing is a vital issue that is encountered in various fields. However, such data are mostly non-stationary on account of the fact that they are affected by a variety of factors. In this paper, we present a supervised strategy by integrating the iterative filtering (IF) method and convolution neural network (CNN) to automatically extract features of time series, where the IF technique can decompose the raw time series into intrinsic mode functions (IMFs), and then the CNN aims to extract the features from the images constructed by the IMFs under specific task. To illustrate the performance of the proposed strategy, we apply it in one-step and multi-step predictive tasks on the national association of securities dealers automated quotations (NASDAQ) data. Furthermore, we compute the importance of the extracted and raw features by the combined decision trees, such as random forest (RF) and gradient boosted decision trees (GBDT). The results indicate the significant improvement of the proposed strategy.
一种集成迭代滤波和卷积神经网络的时间序列特征提取策略
时间序列处理是各个领域都遇到的一个重要问题。然而,这些数据大多是非平稳的,因为它们受到各种因素的影响。本文提出了一种将迭代滤波(IF)方法与卷积神经网络(CNN)相结合的监督策略来自动提取时间序列的特征,其中IF技术可以将原始时间序列分解为内在模态函数(IMFs),然后CNN的目标是从IMFs构建的图像中提取特定任务下的特征。为了说明所提出的策略的性能,我们将其应用于全国证券交易商协会自动报价(NASDAQ)数据的一步和多步预测任务。此外,我们通过随机森林(RF)和梯度增强决策树(GBDT)等组合决策树来计算提取和原始特征的重要性。结果表明,所提出的策略有显著的改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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