Beyond Correlation: Refutation-Validated Aspect-Based Sentiment Analysis for Explainable Energy Market Returns
arXiv cs.AI / 3/24/2026
💬 OpinionSignals & Early TrendsIdeas & Deep AnalysisModels & Research
Key Points
- The paper introduces a refutation-validated framework for aspect-based sentiment analysis in energy financial markets to overcome the weaknesses of purely correlational studies.
- It uses X (formerly Twitter) data and applies a scoring pipeline (net-ratio scoring with z-normalization, OLS with Newey West HAC errors) to test sentiment–return relationships across multiple horizons.
- Refutation testing methods (placebo checks, random common-cause tests, subset stability, and bootstrap) are used to identify which sentiment associations remain statistically robust.
- Results across six energy tickers and one quarter show that only a few aspect-level associations survive all validation checks, with renewables exhibiting aspect- and horizon-specific response patterns.
- The authors emphasize that the approach does not prove causality and is constrained by limited sample size, framing it as a methodological proof of concept for explainable, directionally interpretable signals.
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