TY - JOUR
T1 - TSDNet
T2 - A two-stage decomposition-based hybrid deep neural network for long-term time series forecasting
AU - Cho, Sukhyun
AU - Kim, Dokyun
AU - Park, Jonghun
AU - Park, In Beom
N1 - Publisher Copyright:
© The Author(s) 2025
PY - 2025/11
Y1 - 2025/11
N2 - Due to recent developments in deep learning models, the field of time series forecasting has undergone significant advancements related to forecasting accuracy and reliability across various industrial sectors. Unfortunately, traditional deep learning models often encounter long-term and multivariate forecasting challenges due to complex temporal patterns. To overcome this, decomposition-based approaches have been proposed. However, there have been few attempts to utilize an appropriate network type for each decomposed component. In this paper, we propose the two-stage decomposition-based hybrid deep neural network (TSDNet) for enhancing the accuracy of long-term time series forecasting. To effectively manage complicated time series data with varying periodicities, TSDNet accommodates a single linear layer for forecasting smooth trend components and a convolutional module for complex seasonal components. Extensive experiments on various benchmark and real-world financial datasets show that TSDNet mostly improves the forecasting accuracy compared to the existing methods considered, particularly in long-term forecasting scenarios. Furthermore, ablation studies were conducted to examine the impact of the number of decomposition stages and the implementation of different modules on the decomposed elements, suggesting the effectiveness of the proposed approach.
AB - Due to recent developments in deep learning models, the field of time series forecasting has undergone significant advancements related to forecasting accuracy and reliability across various industrial sectors. Unfortunately, traditional deep learning models often encounter long-term and multivariate forecasting challenges due to complex temporal patterns. To overcome this, decomposition-based approaches have been proposed. However, there have been few attempts to utilize an appropriate network type for each decomposed component. In this paper, we propose the two-stage decomposition-based hybrid deep neural network (TSDNet) for enhancing the accuracy of long-term time series forecasting. To effectively manage complicated time series data with varying periodicities, TSDNet accommodates a single linear layer for forecasting smooth trend components and a convolutional module for complex seasonal components. Extensive experiments on various benchmark and real-world financial datasets show that TSDNet mostly improves the forecasting accuracy compared to the existing methods considered, particularly in long-term forecasting scenarios. Furthermore, ablation studies were conducted to examine the impact of the number of decomposition stages and the implementation of different modules on the decomposed elements, suggesting the effectiveness of the proposed approach.
KW - deep neural networks
KW - long-term time series forecasting
KW - multivariate time series forecasting
KW - time series analysis
KW - time series decomposition
UR - https://www.scopus.com/pages/publications/105021879962
U2 - 10.1177/1088467X241308796
DO - 10.1177/1088467X241308796
M3 - Article
AN - SCOPUS:105021879962
SN - 1088-467X
VL - 29
SP - 1399
EP - 1418
JO - Intelligent Data Analysis
JF - Intelligent Data Analysis
IS - 6
ER -