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[1]戴宇睿,安俊秀,李焯炜.基于信号分解降噪的CNN-BiLSTM金融市场趋势预测[J].成都信息工程大学学报,2023,38(01):28-36.[doi:10.16836/j.cnki.jcuit.2023.01.005]
 DAI Yurui,AN Junxiu,LI Zhuowei.CNN-BiLSTM Financial Market Trend Prediction based on Signal Decomposition and Noise Reduction[J].Journal of Chengdu University of Information Technology,2023,38(01):28-36.[doi:10.16836/j.cnki.jcuit.2023.01.005]
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基于信号分解降噪的CNN-BiLSTM金融市场趋势预测

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备注/Memo

收稿日期:2022-04-22
基金项目:国家自然科学基金资助项目(71673032)

更新日期/Last Update: 2023-02-28