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The Cartographer
Dissecting Failure Dynamics in Large Language Model Reasoning
April 16, 2026 Β· Grace Period Β· π ACL 2026
Authors
Wei Zhu, Jian Zhang, Lixing Yu, Kun Yue, Zhiwen Tang
arXiv ID
2604.14528
Category
cs.AI: Artificial Intelligence
Cross-listed
cs.CL
Citations
0
Venue
ACL 2026
Abstract
Large Language Models (LLMs) achieve strong performance through extended inference-time deliberation, yet how their reasoning failures arise remains poorly understood. By analyzing model-generated reasoning trajectories, we find that errors are not uniformly distributed but often originate from a small number of early transition points, after which reasoning remains locally coherent but globally incorrect. These transitions coincide with localized spikes in token-level entropy, and alternative continuations from the same intermediate state can still lead to correct solutions. Based on these observations, we introduce GUARD, a targeted inference-time framework that probes and redirects critical transitions using uncertainty signals. Empirical evaluations across multiple benchmarks confirm that interventions guided by these failure dynamics lead to more reliable reasoning outcomes. Our findings highlight the importance of understanding when and how reasoning first deviates, complementing existing approaches that focus on scaling inference-time computation.
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