Financial time series classification method based on low‐frequency approximate representation

Abstract Aiming at the mode mixing problems of high frequency information caused by fluctuation agglomeration and pointed peak thick tail of financial time series, a time series classification method based on low frequency approximate representation is proposed. The steps are as follows. Firstly, co...

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Main Authors: Bing Liu, Huanhuan Cheng
Format: Article
Language:English
Published: Wiley 2025-01-01
Series:Engineering Reports
Subjects:
Online Access:https://doi.org/10.1002/eng2.12739
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author Bing Liu
Huanhuan Cheng
author_facet Bing Liu
Huanhuan Cheng
author_sort Bing Liu
collection DOAJ
description Abstract Aiming at the mode mixing problems of high frequency information caused by fluctuation agglomeration and pointed peak thick tail of financial time series, a time series classification method based on low frequency approximate representation is proposed. The steps are as follows. Firstly, complete ensemble empirical mode decomposition with adaptive noise (CEEMDAN) was used to decompose the time series into a series of modal components and residual terms, and the permutation entropy of the modal components and residual terms was calculated. And the permutation entropy was clustered into two categories by Fisher's optimal segmentation method. Then, according to the clustering results of permutation entropy, the corresponding modal components and residual terms were integrated into high frequency information and low frequency information, so as to realize the adaptive extraction of low frequency information. Secondly, distance matrices were obtained by Euclidean distance (ED) or dynamic time warping (DTW) for low frequency information, and then the nearest neighbor 1‐NN algorithm was used to classify time series.
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institution Kabale University
issn 2577-8196
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publishDate 2025-01-01
publisher Wiley
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spelling doaj-art-2c2e625a7f3447c5a5fdfe190733ed422025-01-31T00:22:48ZengWileyEngineering Reports2577-81962025-01-0171n/an/a10.1002/eng2.12739Financial time series classification method based on low‐frequency approximate representationBing Liu0Huanhuan Cheng1School of Economics and Management Huainan Normal University Huainan ChinaSchool of Economics and Management Huainan Normal University Huainan ChinaAbstract Aiming at the mode mixing problems of high frequency information caused by fluctuation agglomeration and pointed peak thick tail of financial time series, a time series classification method based on low frequency approximate representation is proposed. The steps are as follows. Firstly, complete ensemble empirical mode decomposition with adaptive noise (CEEMDAN) was used to decompose the time series into a series of modal components and residual terms, and the permutation entropy of the modal components and residual terms was calculated. And the permutation entropy was clustered into two categories by Fisher's optimal segmentation method. Then, according to the clustering results of permutation entropy, the corresponding modal components and residual terms were integrated into high frequency information and low frequency information, so as to realize the adaptive extraction of low frequency information. Secondly, distance matrices were obtained by Euclidean distance (ED) or dynamic time warping (DTW) for low frequency information, and then the nearest neighbor 1‐NN algorithm was used to classify time series.https://doi.org/10.1002/eng2.12739complete ensemble empirical mode decomposition with adaptive noisefinancial time serieslow‐frequency approximate representationpermutation entropytime series classification
spellingShingle Bing Liu
Huanhuan Cheng
Financial time series classification method based on low‐frequency approximate representation
Engineering Reports
complete ensemble empirical mode decomposition with adaptive noise
financial time series
low‐frequency approximate representation
permutation entropy
time series classification
title Financial time series classification method based on low‐frequency approximate representation
title_full Financial time series classification method based on low‐frequency approximate representation
title_fullStr Financial time series classification method based on low‐frequency approximate representation
title_full_unstemmed Financial time series classification method based on low‐frequency approximate representation
title_short Financial time series classification method based on low‐frequency approximate representation
title_sort financial time series classification method based on low frequency approximate representation
topic complete ensemble empirical mode decomposition with adaptive noise
financial time series
low‐frequency approximate representation
permutation entropy
time series classification
url https://doi.org/10.1002/eng2.12739
work_keys_str_mv AT bingliu financialtimeseriesclassificationmethodbasedonlowfrequencyapproximaterepresentation
AT huanhuancheng financialtimeseriesclassificationmethodbasedonlowfrequencyapproximaterepresentation