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Quantum-Enhanced Reinforcement Learning with LSTM Forecasting Signals for Optimizing Fintech Trading Decisions

Published: July 17, 2025 | arXiv ID: 2507.12835v1

By: Yen-Ku Liu , Yun-Huei Pan , Pei-Fan Lu and more

Potential Business Impact:

Quantum computers trade stocks better than regular ones.

Plain English Summary

Imagine trying to make smart money moves in a stock market that's always changing and unpredictable. This new approach uses a special kind of computing, like a super-powered calculator, to make better trading decisions even when things get wild. This could lead to more reliable investment strategies that handle market ups and downs better, potentially helping people grow their savings more effectively.

Financial trading environments are characterized by high volatility, numerous macroeconomic signals, and dynamically shifting market regimes, where traditional reinforcement learning methods often fail to deliver breakthrough performance. In this study, we design a reinforcement learning framework tailored for financial systems by integrating quantum circuits. We compare (1) the performance of classical A3C versus quantum A3C algorithms, and (2) the impact of incorporating LSTM-based predictions of the following week's economic trends on learning outcomes. The experimental framework adopts a custom Gymnasium-compatible trading environment, simulating discrete trading actions and evaluating rewards based on portfolio feedback. Experimental results show that quantum models - especially when combined with predictive signals - demonstrate superior performance and stability under noisy financial conditions, even with shallow quantum circuit depth.

Country of Origin
🇹🇼 Taiwan, Province of China

Page Count
6 pages

Category
Computer Science:
Computational Engineering, Finance, and Science