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用于深度学习时间序列预测的平滑与平稳性增强框架。

Smoothing and stationarity enforcement framework for deep learning time-series forecasting.

作者信息

Livieris Ioannis E, Stavroyiannis Stavros, Iliadis Lazaros, Pintelas Panagiotis

机构信息

Department of Mathematics, University of Patras, Patras, 265-00 Greece.

Department of Accounting and Finance, University of the Peloponnese, Antikalamos, 241-00 Greece.

出版信息

Neural Comput Appl. 2021;33(20):14021-14035. doi: 10.1007/s00521-021-06043-1. Epub 2021 May 5.

DOI:10.1007/s00521-021-06043-1
PMID:33967398
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC8096631/
Abstract

Time-series analysis and forecasting problems are generally considered as some of the most challenging and complicated problems in data mining. In this work, we propose a new complete framework for enhancing deep learning time-series models, which is based on a data preprocessing methodology. The proposed framework focuses on conducting a sequence of transformations on the original low-quality time-series data for generating high-quality time-series data, "" for efficiently training and fitting a deep learning model. These transformations are performed in two successive stages: The first stage is based on the smoothing technique for the development of a new de-noised version of the original series in which every value contains dynamic knowledge of the all previous values. The second stage of transformations is performed on the smoothed series and it is based on differencing the series in order to be stationary and be considerably easier fitted and analyzed by a deep learning model. A number of experiments were performed utilizing time-series datasets from the cryptocurrency market, energy sector and financial stock market application domains on both regression and classification problems. The comprehensive numerical experiments and statistical analysis provide empirical evidence that the proposed framework considerably improves the forecasting performance of a deep learning model.

摘要

时间序列分析和预测问题通常被认为是数据挖掘中一些最具挑战性和复杂性的问题。在这项工作中,我们提出了一个基于数据预处理方法来增强深度学习时间序列模型的全新完整框架。所提出的框架专注于对原始低质量时间序列数据进行一系列变换,以生成高质量时间序列数据,从而有效地训练和拟合深度学习模型。这些变换分两个连续阶段进行:第一阶段基于平滑技术,用于开发原始序列的新去噪版本,其中每个值都包含所有先前值的动态知识。变换的第二阶段在平滑后的序列上进行,它基于对序列进行差分以使序列平稳,并且能被深度学习模型更容易地拟合和分析。利用来自加密货币市场、能源部门和金融股票市场应用领域的时间序列数据集,针对回归和分类问题进行了大量实验。全面的数值实验和统计分析提供了经验证据,表明所提出的框架显著提高了深度学习模型的预测性能。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e3b9/8096631/9d910ce14952/521_2021_6043_Fig1_HTML.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e3b9/8096631/9d910ce14952/521_2021_6043_Fig1_HTML.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e3b9/8096631/9d910ce14952/521_2021_6043_Fig1_HTML.jpg

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