A novel deep learning framework: Prediction and analysis of financial time series using CEEMD and LSTM
Autor: | Yong'an Zhang, Memon Aasma, Binbin Yan |
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Rok vydání: | 2020 |
Předmět: |
Finance
0209 industrial biotechnology business.industry Computer science Deep learning General Engineering 02 engineering and technology Stock market index Hilbert–Huang transform Computer Science Applications 020901 industrial engineering & automation Artificial Intelligence Robustness (computer science) 0202 electrical engineering electronic engineering information engineering 020201 artificial intelligence & image processing Profitability index Sequence learning Artificial intelligence business Raw data Smoothing |
Zdroj: | Expert Systems with Applications. 159:113609 |
ISSN: | 0957-4174 |
DOI: | 10.1016/j.eswa.2020.113609 |
Popis: | Deep learning is well-known for extracting high-level abstract features from a large amount of raw data without relying on prior knowledge, which is potentially attractive in forecasting financial time series. Long short-term memory (LSTM) networks are deemed as state-of-the-art techniques in sequence learning, which are less commonly applied to financial time series predictions, yet inherently suitable for this domain. We propose a novel methodology of deep learning prediction, and based on this, construct a deep learning hybrid prediction model for stock markets—CEEMD-PCA-LSTM. In this model, complementary ensemble empirical mode decomposition (CEEMD), as a sequence smoothing and decomposition module, can decompose the fluctuations or trends of different scales of time series step by step, generating a series of intrinsic mode functions (IMFs) with different characteristic scales. Then, with retaining the most of information on raw data, PCA reduces dimension of the decomposed IMFs component, eliminating the redundant information and improving prediction response speed. After that, high-level abstract features are separately fed into LSTM networks to predict closing price of the next trading day for each component. Finally, synthesizing the predicted values of individual components is utilized to obtain a final predicted value. The empirical results of six representative stock indices from three types of markets indicate that our proposed model outperforms benchmark models in terms of predictive accuracy, i.e., lower test error and higher directional symmetry. Leveraging key research findings, we perform trading simulations to validate that the proposed model outperforms benchmark models in both absolute profitability performance and risk-adjusted profitability performance. Furthermore, model robustness test unveils the more stable robustness compared to benchmark models. |
Databáze: | OpenAIRE |
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