2024
DOI: 10.3390/app14166881
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A Stock Market Decision-Making Framework Based on CMR-DQN

Xun Chen,
Qin Wang,
Chao Hu
et al.

Abstract: In the dynamic and uncertain stock market, precise forecasting and decision-making are crucial for profitability. Traditional deep neural networks (DNN) often struggle with capturing long-term dependencies and multi-scale features in complex financial time series data. To address these challenges, we introduce CMR-DQN, an innovative framework that integrates discrete wavelet transform (DWT) for multi-scale data analysis, temporal convolutional network (TCN) for extracting deep temporal features, and a GRU–LSTM… Show more

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