Journal of Nanjing University(Natural Sciences), Volume. 61, Issue 4, 613(2025)
A stock price prediction method based on improved empirical mode decomposition and A⁃LSTM hybrid neural network
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Su Zhaohui, Shang Ling, Liu Zhizhong, Huang Hao. A stock price prediction method based on improved empirical mode decomposition and A⁃LSTM hybrid neural network[J]. Journal of Nanjing University(Natural Sciences), 2025, 61(4): 613
Received: Mar. 26, 2025
Accepted: Aug. 22, 2025
Published Online: Aug. 22, 2025
The Author Email: Liu Zhizhong (zhizhongliu@ytu.edu.cn)