A Hybrid Architecture for Options Wheel Strategy Decisions: LLM-Generated Bayesian Networks for Transparent Trading
Xiaoting Kuang, Boken Lin

TL;DR
This paper introduces a hybrid system combining LLMs and Bayesian Networks to make transparent, data-driven options trading decisions, achieving high returns and low risk over extensive testing.
Contribution
It presents a novel hybrid architecture where LLMs build and refine Bayesian networks for transparent, probabilistic trading decisions, integrating qualitative understanding with quantitative rigor.
Findings
15.3% annualized return over 19 years
Sharpe ratio of 1.08 indicating high risk-adjusted performance
-8.2% maximum drawdown showing reduced risk
Abstract
Large Language Models (LLMs) excel at understanding context and qualitative nuances but struggle with the rigorous and transparent reasoning required in high-stakes quantitative domains such as financial trading. We propose a model-first hybrid architecture for the options "wheel" strategy that combines the strengths of LLMs with the robustness of a Bayesian Network. Rather than using the LLM as a black-box decision-maker, we employ it as an intelligent model builder. For each trade decision, the LLM constructs a context-specific Bayesian network by interpreting current market conditions, including prices, volatility, trends, and news, and hypothesizing relationships among key variables. The LLM also selects relevant historical data from an 18.75-year, 8,919-trade dataset to populate the network's conditional probability tables. This selection focuses on scenarios analogous to the…
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Taxonomy
TopicsStock Market Forecasting Methods · Explainable Artificial Intelligence (XAI) · Forecasting Techniques and Applications
