December 2023
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18 Reads
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22 Citations
Expert Systems with Applications
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December 2023
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18 Reads
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22 Citations
Expert Systems with Applications
December 2022
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67 Reads
More and more stock trading strategies are constructed using deep reinforcement learning (DRL) algorithms, but DRL methods originally widely used in the gaming community are not directly adaptable to financial data with low signal-to-noise ratios and unevenness, and thus suffer from performance shortcomings. In this paper, to capture the hidden information, we propose a DRL based stock trading system using cascaded LSTM, which first uses LSTM to extract the time-series features from stock daily data, and then the features extracted are fed to the agent for training, while the strategy functions in reinforcement learning also use another LSTM for training. Experiments in DJI in the US market and SSE50 in the Chinese stock market show that our model outperforms previous baseline models in terms of cumulative returns and Sharp ratio, and this advantage is more significant in the Chinese stock market, a merging market. It indicates that our proposed method is a promising way to build a automated stock trading system.
November 2022
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13 Reads
With the improvement of arithmetic power and algorithm accuracy of personal devices, biological features are increasingly widely used in personal identification, and palm vein recognition has rich extractable features and has been widely studied in recent years. However, traditional recognition methods are poorly robust and susceptible to environmental influences such as reflections and noise. In this paper, a convolutional neural network based on VGG-16 transfer learning fused attention mechanism is used as the feature extraction network on the infrared palm vein dataset. The palm vein classification task is first trained using palmprint classification methods, followed by matching using a similarity function, in which we propose the multi-task loss function to improve the accuracy of the matching task. In order to verify the robustness of the model, some experiments were carried out on datasets from different sources. Then, we used K-means clustering to determine the adaptive matching threshold and finally achieved an accuracy rate of 98.89% on prediction set. At the same time, the matching is with high efficiency which takes an average of 0.13 seconds per palm vein pair, and that means our method can be adopted in practice.
... Finally, some libraries have been developed for use in financial reinforcement learning studies, and several of these libraries have been made available as open-source tools [56]. Another study proposes a DRL-based trading system employing a cascaded LSTM-PPO model to better capture hidden information in daily stock data, achieving 5% to 52% performance improvements over baseline models in metrics like cumulative returns and profitability across major indices including DJI, SSE50, SENSEX, and FTSE100 [57]. In the literature, a modified actor-critic RL model integrating technical analysis metrics to address multidimensional noise and transaction costs has been shown to outperform pure RL and traditional benchmarks on the S&P500 dataset [58]. ...
December 2023
Expert Systems with Applications