A new denoising approach based on mode decomposition applied to the stock market time series: 2LE-CEEMDAN

Time series, including noise, non-linearity, and non-stationary properties, are frequently used in prediction problems. Due to these inherent characteristics of time series data, forecasting based on this data type is a highly challenging problem. In many studies within the literature, high-frequenc...

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Main Authors: Zinnet Duygu Akşehir, Erdal Kılıç
Format: Article
Language:English
Published: PeerJ Inc. 2024-02-01
Series:PeerJ Computer Science
Subjects:
Online Access:https://peerj.com/articles/cs-1852.pdf
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author Zinnet Duygu Akşehir
Erdal Kılıç
author_facet Zinnet Duygu Akşehir
Erdal Kılıç
author_sort Zinnet Duygu Akşehir
collection DOAJ
description Time series, including noise, non-linearity, and non-stationary properties, are frequently used in prediction problems. Due to these inherent characteristics of time series data, forecasting based on this data type is a highly challenging problem. In many studies within the literature, high-frequency components are commonly excluded from time series data. However, these high-frequency components can contain valuable information, and their removal may adversely impact the prediction performance of models. In this study, a novel method called Two-Level Entropy Ratio-Based Complete Ensemble Empirical Mode Decomposition with Adaptive Noise (2LE-CEEMDAN) is proposed for the first time to effectively denoise time series data. Financial time series with high noise levels are utilized to validate the effectiveness of the proposed method. The 2LE-CEEMDAN-LSTM-SVR model is introduced to predict the next day’s closing value of stock market indices within the scope of financial time series. This model comprises two main components: denoising and forecasting. In the denoising section, the proposed 2LE-CEEMDAN method eliminates noise in financial time series, resulting in denoised intrinsic mode functions (IMFs). In the forecasting part, the next-day value of the indices is estimated by training on the denoised IMFs obtained. Two different artificial intelligence methods, Long Short-Term Memory (LSTM) and Support Vector Regression (SVR), are utilized during the training process. The IMF, characterized by more linear characteristics than the denoised IMFs, is trained using the SVR, while the others are trained using the LSTM method. The final prediction result of the 2LE-CEEMDAN-LSTM-SVR model is obtained by integrating the prediction results of each IMF. Experimental results demonstrate that the proposed 2LE-CEEMDAN denoising method positively influences the model’s prediction performance, and the 2LE-CEEMDAN-LSTM-SVR model outperforms other prediction models in the existing literature.
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spelling doaj.art-d2a77e88ed6a476d9d039337d66532f72024-02-22T15:05:10ZengPeerJ Inc.PeerJ Computer Science2376-59922024-02-0110e185210.7717/peerj-cs.1852A new denoising approach based on mode decomposition applied to the stock market time series: 2LE-CEEMDANZinnet Duygu AkşehirErdal KılıçTime series, including noise, non-linearity, and non-stationary properties, are frequently used in prediction problems. Due to these inherent characteristics of time series data, forecasting based on this data type is a highly challenging problem. In many studies within the literature, high-frequency components are commonly excluded from time series data. However, these high-frequency components can contain valuable information, and their removal may adversely impact the prediction performance of models. In this study, a novel method called Two-Level Entropy Ratio-Based Complete Ensemble Empirical Mode Decomposition with Adaptive Noise (2LE-CEEMDAN) is proposed for the first time to effectively denoise time series data. Financial time series with high noise levels are utilized to validate the effectiveness of the proposed method. The 2LE-CEEMDAN-LSTM-SVR model is introduced to predict the next day’s closing value of stock market indices within the scope of financial time series. This model comprises two main components: denoising and forecasting. In the denoising section, the proposed 2LE-CEEMDAN method eliminates noise in financial time series, resulting in denoised intrinsic mode functions (IMFs). In the forecasting part, the next-day value of the indices is estimated by training on the denoised IMFs obtained. Two different artificial intelligence methods, Long Short-Term Memory (LSTM) and Support Vector Regression (SVR), are utilized during the training process. The IMF, characterized by more linear characteristics than the denoised IMFs, is trained using the SVR, while the others are trained using the LSTM method. The final prediction result of the 2LE-CEEMDAN-LSTM-SVR model is obtained by integrating the prediction results of each IMF. Experimental results demonstrate that the proposed 2LE-CEEMDAN denoising method positively influences the model’s prediction performance, and the 2LE-CEEMDAN-LSTM-SVR model outperforms other prediction models in the existing literature.https://peerj.com/articles/cs-1852.pdfTime seriesStock market predictionDenoisingTwo-level CEEMDANEntropy
spellingShingle Zinnet Duygu Akşehir
Erdal Kılıç
A new denoising approach based on mode decomposition applied to the stock market time series: 2LE-CEEMDAN
PeerJ Computer Science
Time series
Stock market prediction
Denoising
Two-level CEEMDAN
Entropy
title A new denoising approach based on mode decomposition applied to the stock market time series: 2LE-CEEMDAN
title_full A new denoising approach based on mode decomposition applied to the stock market time series: 2LE-CEEMDAN
title_fullStr A new denoising approach based on mode decomposition applied to the stock market time series: 2LE-CEEMDAN
title_full_unstemmed A new denoising approach based on mode decomposition applied to the stock market time series: 2LE-CEEMDAN
title_short A new denoising approach based on mode decomposition applied to the stock market time series: 2LE-CEEMDAN
title_sort new denoising approach based on mode decomposition applied to the stock market time series 2le ceemdan
topic Time series
Stock market prediction
Denoising
Two-level CEEMDAN
Entropy
url https://peerj.com/articles/cs-1852.pdf
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