Beyond Polarity: Multi-Dimensional LLM Sentiment Signals for WTI Crude Oil Futures Return Prediction
arXiv cs.CL / 3/13/2026
💬 OpinionSignals & Early TrendsIndustry & Market MovesModels & Research
Key Points
- The study demonstrates that multi-dimensional sentiment signals from large language models can improve weekly WTI crude oil futures return prediction beyond traditional polarity-based measures.
- Five sentiment dimensions are constructed—relevance, polarity, intensity, uncertainty, and forwardness—derived from energy-news articles spanning 2020–2025 and aggregated to the weekly level.
- The strongest predictive performance occurs when combining GPT-4o with FinBERT, indicating complementary information between LLM-based and conventional financial sentiment models.
- SHAP analysis shows that intensity- and uncertainty-related features are among the most important predictors, highlighting that sentiment signals beyond simple polarity have predictive value.
- Overall, the findings suggest that multi-dimensional LLM-based sentiment measures can enhance commodity return forecasting and support energy-market risk monitoring.
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