Madhulatha T Soni, Ghori Dr Md Atheeq Sultan
Department of Computer Science, Telangana University, 503322, Dichpalli, Nizāmābād, India.
Associate Professor, Department of Computer Science and Engineering, Telangana University, 503322, Dichpalli, Nizamabad, India.
Sci Rep. 2025 Aug 8;15(1):29009. doi: 10.1038/s41598-025-12516-3.
Exchange rate forecasting is crucial for informed decision-making in financial markets, but significant challenges arise due to the high volatility and non-linear nature of economic time series. Traditional statistical models (ARIMA), state-of-the-art deep learning methods (LSTM, GRU), and hybrid models (TSMixer, in addition to AB-LSTM-GRU) all exhibit low adaptability to dynamic market conditions, as they cannot perform iterative optimization based on real-time feedback. To bridge this gap, this work presents an innovative hybrid framework that combines Long Short-Term Memory (LSTM) networks and a Deep Q-network (DQN) agent. Precisely, LSTM models capture temporal dependencies in time series data, and DQNs introduce a reinforcement learning mechanism that optimizes prediction adaptively based on feedback. The algorithm leverages the strengths of both deep learning and reinforcement learning to achieve improved predictive accuracy and adaptability. The effectiveness of the proposed model is substantiated by an experimental study based on USD/INR exchange rate data, which outperformed five existing state-of-the-art models in terms of lower Mean Squared Error (0.37) and Root Mean Squared Error (0.61). These quantitative achievements demonstrate the model's power and robustness in minimizing forecast errors. The model proposed in this study has significant implications for financial forecasting, improving the decision-making capabilities of traders, investors, and policy-makers. Its robust framework allows for greater flexibility in response to market changes, making it a potential instrument for complex financial systems.
汇率预测对于金融市场中明智的决策至关重要,但由于经济时间序列的高波动性和非线性性质,出现了重大挑战。传统统计模型(ARIMA)、最先进的深度学习方法(LSTM、GRU)以及混合模型(TSMixer,此外还有AB-LSTM-GRU)对动态市场条件的适应性都很低,因为它们无法基于实时反馈进行迭代优化。为了弥合这一差距,这项工作提出了一种创新的混合框架,该框架结合了长短期记忆(LSTM)网络和深度Q网络(DQN)智能体。具体而言,LSTM模型捕捉时间序列数据中的时间依赖性,而DQN引入了一种强化学习机制,该机制基于反馈自适应地优化预测。该算法利用深度学习和强化学习的优势,以提高预测准确性和适应性。基于美元/印度卢比汇率数据的实验研究证实了所提出模型的有效性,该模型在较低的均方误差(0.37)和均方根误差(0.61)方面优于五个现有的最先进模型。这些定量成果证明了该模型在最小化预测误差方面的能力和稳健性。本研究中提出的模型对金融预测具有重要意义,提高了交易员、投资者和政策制定者的决策能力。其稳健的框架在应对市场变化时具有更大的灵活性,使其成为复杂金融系统的潜在工具。