Early warning of systemic risk in stock market based on EEMD-LSTM.

With the increasing importance of the stock market, it is of great practical significance to accurately describe the systemic risk of the stock market and conduct more accurate early warning research on it. However, the existing research on the systemic risk of the stock market lacks multi-dimension...

وصف كامل

التفاصيل البيبلوغرافية
الحاوية / القاعدة:PLoS ONE
المؤلفون الرئيسيون: Meng Ran, Zhenpeng Tang, Yuhang Chen, Zhiqi Wang
التنسيق: مقال
اللغة:الإنجليزية
منشور في: Public Library of Science (PLoS) 2024-01-01
الوصول للمادة أونلاين:https://doi.org/10.1371/journal.pone.0300741
_version_ 1850545767057457152
author Meng Ran
Zhenpeng Tang
Yuhang Chen
Zhiqi Wang
author_facet Meng Ran
Zhenpeng Tang
Yuhang Chen
Zhiqi Wang
author_sort Meng Ran
collection DOAJ
container_title PLoS ONE
description With the increasing importance of the stock market, it is of great practical significance to accurately describe the systemic risk of the stock market and conduct more accurate early warning research on it. However, the existing research on the systemic risk of the stock market lacks multi-dimensional factors, and there is still room for improvement in the forecasting model. Therefore, to further measure the systemic risk profile of the Chinese stock market, establish a risk early warning system suitable for the Chinese stock market, and improve the risk management awareness of investors and regulators. This paper proposes a combination model of EEMD-LSTM, which can describe the complex nonlinear interaction. Firstly, 35 stock market systemic risk indicators are selected from the perspectives of macroeconomic operation, market cross-contagion and the stock market itself to build a comprehensive indicator system that conforms to the reality of China. Furthermore, based on TEI@I complex system methodology, an EEMD-LSTM model is proposed. The EEMD method is adopted to decompose the composite index sequence into intrinsic mode function components (IMF) of different scales and one trend term. Then the LSTM algorithm is used to predicted and model the decomposed sub-sequences. Finally, the forecast result of the composite index is obtained through integration. The empirical results show that the stock market systemic risk index constructed in this paper can effectively identify important risk events within the sample period. In addition, compared with the benchmark model, the EEMD-LSTM model constructed in this paper shows a stronger early warning ability for systemic financial risks in the stock market.
format Article
id doaj-art-e65fe44f92094b6c962f38d18d3cea09
institution Directory of Open Access Journals
issn 1932-6203
language English
publishDate 2024-01-01
publisher Public Library of Science (PLoS)
record_format Article
spelling doaj-art-e65fe44f92094b6c962f38d18d3cea092025-08-19T22:37:40ZengPublic Library of Science (PLoS)PLoS ONE1932-62032024-01-01195e030074110.1371/journal.pone.0300741Early warning of systemic risk in stock market based on EEMD-LSTM.Meng RanZhenpeng TangYuhang ChenZhiqi WangWith the increasing importance of the stock market, it is of great practical significance to accurately describe the systemic risk of the stock market and conduct more accurate early warning research on it. However, the existing research on the systemic risk of the stock market lacks multi-dimensional factors, and there is still room for improvement in the forecasting model. Therefore, to further measure the systemic risk profile of the Chinese stock market, establish a risk early warning system suitable for the Chinese stock market, and improve the risk management awareness of investors and regulators. This paper proposes a combination model of EEMD-LSTM, which can describe the complex nonlinear interaction. Firstly, 35 stock market systemic risk indicators are selected from the perspectives of macroeconomic operation, market cross-contagion and the stock market itself to build a comprehensive indicator system that conforms to the reality of China. Furthermore, based on TEI@I complex system methodology, an EEMD-LSTM model is proposed. The EEMD method is adopted to decompose the composite index sequence into intrinsic mode function components (IMF) of different scales and one trend term. Then the LSTM algorithm is used to predicted and model the decomposed sub-sequences. Finally, the forecast result of the composite index is obtained through integration. The empirical results show that the stock market systemic risk index constructed in this paper can effectively identify important risk events within the sample period. In addition, compared with the benchmark model, the EEMD-LSTM model constructed in this paper shows a stronger early warning ability for systemic financial risks in the stock market.https://doi.org/10.1371/journal.pone.0300741
spellingShingle Meng Ran
Zhenpeng Tang
Yuhang Chen
Zhiqi Wang
Early warning of systemic risk in stock market based on EEMD-LSTM.
title Early warning of systemic risk in stock market based on EEMD-LSTM.
title_full Early warning of systemic risk in stock market based on EEMD-LSTM.
title_fullStr Early warning of systemic risk in stock market based on EEMD-LSTM.
title_full_unstemmed Early warning of systemic risk in stock market based on EEMD-LSTM.
title_short Early warning of systemic risk in stock market based on EEMD-LSTM.
title_sort early warning of systemic risk in stock market based on eemd lstm
url https://doi.org/10.1371/journal.pone.0300741
work_keys_str_mv AT mengran earlywarningofsystemicriskinstockmarketbasedoneemdlstm
AT zhenpengtang earlywarningofsystemicriskinstockmarketbasedoneemdlstm
AT yuhangchen earlywarningofsystemicriskinstockmarketbasedoneemdlstm
AT zhiqiwang earlywarningofsystemicriskinstockmarketbasedoneemdlstm