Residual Drift Dominates Contradiction in Multi-Turn Constraint Reasoning

Published: 08 Mar 2026, Last Modified: 25 Apr 2026ICLR 2026 Workshop LLM ReasoningEveryoneRevisionsBibTeXCC BY 4.0
Track: long paper (up to 10 pages)
Keywords: multi-turn reasoning, constraint satisfaction, satisfiable drift, MUS repair, minimal unsatisfiable subsets, constraint ledger, LLM evaluation, DRIFT-Bench, Z3
TL;DR: DRIFT-Bench shows that after solver-guided repair, residual multi-turn reasoning failures are almost entirely satisfiable drift rather than logical contradiction.
Abstract: How do multi-turn reasoning systems fail? The expected answer is logical contradiction, in which the system's maintained state becomes unsatisfiable. We show that the dominant mode is instead satisfiable drift, where the internal state stays consistent while the returned answer silently violates prior commitments. We build DRIFT-Bench (Decomposing Reasoning Into Failure Types), a solver-instrumented benchmark of 816 test problems across three constraint domains, and evaluate four methods on it across four open-weight models (8B-120B parameters). MUS-Repair, which feeds minimal unsatisfiable subsets back to the generator, is strongest in every setting (+1.8 to +15.0 pp over the best non-MUS baseline). But the central finding is what repair leaves behind. After structured feedback, models rarely contradict themselves. They forget. Residual errors are 98-100% satisfiable drift across all settings, while contradiction drops to near zero. Reliable multi-turn systems must separately validate that the returned answer respects the maintained state. Code is available at https://github.com/kaons-research/drift-bench.
Anonymization: This submission has been anonymized for double-blind review via the removal of identifying information such as names, affiliations, and identifying URLs.
Funding: No, the presenting author of this submission does *not* fall under ICLR’s funding aims, or has sufficient alternate funding.
Submission Number: 124
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