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PERFORMANCE COMPARISON OF CEEMDAN-LSTM AND BASIC LSTM MODELS IN PREDICTING REALIZED VOLATILITY

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Volume 1, Issue 1, Pp 34-38, 2024

DOI: 10.61784/mjet3007

Author(s)

ZheShuo Zhang

Affiliation(s)

Wenzhou-Kean University, Wenzhou 325060, Zhejiang, China.

Corresponding Author

ZheShuo Zhang

ABSTRACT

This paper presents a comparative analysis of the effectiveness of hybrid CEEMDAN-LSTM models and traditional LSTM models in predicting realized volatility in financial markets. By utilizing realized volatility data from 2004 to 2024, the study highlights significant market fluctuations during the 2008 financial crisis and the 2020 COVID-19 pandemic. The findings indicate that the CEEMDAN-LSTM model, which decomposes time series data into intrinsic mode functions (IMFs) before applying LSTM networks, outperforms the basic LSTM model in terms of predictive accuracy, particularly during periods of high volatility. This enhanced performance is evidenced by lower error metrics, such as Mean Absolute Error (MAE) and Mean Squared Error (MSE). The research underscores the value of integrating advanced decomposition techniques with deep learning models to better capture the complex dynamics of financial markets.

KEYWORDS

CEEMDAN-LSTM; Intrinsic mode functions (IMFs); Mean Absolute Error (MAE); Mean Squared Error (MSE)

CITE THIS PAPER

ZheShuo Zhang. Performance comparison of CEEMDAN-LSTM and basic LSTM models in predicting realized volatility. Multidisciplinary Journal of Engineering and Technology. 2024, 1(1): 34-38. DOI: 10.61784/mjet3007.

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