Evaluating Counterfactual Strategic Reasoning in Large Language Models
arXiv cs.CL / 3/20/2026
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Key Points
- The authors evaluate Large Language Models in repeated Prisoner's Dilemma and Rock-Paper-Scissors to determine whether strategic performance reflects genuine reasoning or memorized patterns.
- They introduce counterfactual variants that alter payoff structures and action labels, breaking symmetries and dominance relations to test incentive sensitivity.
- A multi-metric evaluation framework compares default and counterfactual instantiations, highlighting LLM limitations in incentive sensitivity, structural generalization, and strategic reasoning within counterfactual environments.
- The work highlights implications for evaluating AI strategic reasoning and suggests directions to improve model evaluation and robustness in strategic contexts.
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