A Novel Hybrid Model for Financial Forecasting Based on CEEMDAN-SE and ARIMA-CNN-LSTM
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Cited by:
- Lu Zhang & Lei Hua, 2025. "Major Issues in High-Frequency Financial Data Analysis: A Survey of Solutions," Mathematics, MDPI, vol. 13(3), pages 1-40, January.
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Keywords
CEEMDAN-SE; ARIMA; CNN-LSTM; financial forecasting;All these keywords.
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