Dynamic Theory of Mind as a Temporal Memory Problem: Evidence from Large Language Models
arXiv cs.AI / 3/17/2026
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Key Points
- The paper introduces DToM-Track, an evaluation framework to study dynamic theory of mind as a temporal memory problem in controlled multi-turn conversations with LLMs.
- It shows that models reliably infer an agent's current belief but struggle to maintain and retrieve prior belief states after updates, revealing an asymmetry in temporal belief reasoning.
- This difficulty persists across model families and scales, aligning with known recency bias and interference effects from cognitive science.
- By framing ToM as temporal representation and retrieval, the work connects social reasoning in LLMs to core memory mechanisms and has implications for extended human-AI interactions.
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