Language Model Guided Reinforcement Learning in Quantitative Trading
By: Adam Darmanin, Vince Vella
Potential Business Impact:
AI learns to make smarter money trades.
Algorithmic trading requires short-term decisions aligned with long-term financial goals. While reinforcement learning (RL) has been explored for such tactical decisions, its adoption remains limited by myopic behavior and opaque policy rationale. In contrast, large language models (LLMs) have recently demonstrated strategic reasoning and multi-modal financial signal interpretation when guided by well-designed prompts. We propose a hybrid system where LLMs generate high-level trading strategies to guide RL agents in their actions. We evaluate (i) the rationale of LLM-generated strategies via expert review, and (ii) the Sharpe Ratio (SR) and Maximum Drawdown (MDD) of LLM-guided agents versus unguided baselines. Results show improved return and risk metrics over standard RL.
Similar Papers
Language Model Guided Reinforcement Learning in Quantitative Trading
Machine Learning (CS)
AI helps trade money better, with less risk.
Agent-R1: Training Powerful LLM Agents with End-to-End Reinforcement Learning
Computation and Language
Teaches AI to learn and solve problems better.
To Trade or Not to Trade: An Agentic Approach to Estimating Market Risk Improves Trading Decisions
Statistical Finance
Helps computers trade stocks better using math.