TRACE: Temporal Rule-Anchored Chain-of-Evidence on Knowledge Graphs for Interpretable Stock Movement Prediction
arXiv cs.AI / 3/16/2026
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Key Points
- TRACE introduces a temporal rule-anchored chain-of-evidence on knowledge graphs for interpretable stock movement prediction in a single end-to-end pipeline.
- It unifies symbolic relational priors, dynamic graph exploration, and LLM-guided decision making, grounding candidate reasoning in contemporaneous news to produce auditable UP/DOWN verdicts with human-readable paths connecting text and structure.
- On an S&P 500 benchmark, the method achieves 55.1% accuracy, 55.7% precision, 71.5% recall, and 60.8% F1, surpassing strong baselines and improving recall and F1 over the best graph baseline under identical evaluation.
- The gains are attributed to rule-guided exploration focusing searches on economically meaningful motifs and text-grounded consolidation of high-confidence, fully grounded hypotheses, yielding higher sensitivity without sacrificing selectivity.
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