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    Home»AI Tools»Probing the Decoupling Hypothesis in LLM Reasoning
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    Probing the Decoupling Hypothesis in LLM Reasoning

    AwaisBy AwaisFebruary 6, 2026No Comments2 Mins Read0 Views
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    [Submitted on 23 May 2025 (v1), last revised 4 Feb 2026 (this version, v2)]

    View a PDF of the paper titled Robust Answers, Fragile Logic: Probing the Decoupling Hypothesis in LLM Reasoning, by Enyi Jiang and 4 other authors

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    Abstract:While Chain-of-Thought (CoT) prompting has become a cornerstone for complex reasoning in Large Language Models (LLMs), the faithfulness of the generated reasoning remains an open question. We investigate the Decoupling Hypothesis: that correct answers often mask fragile, post-hoc rationalizations that are not causally tied to the model’s prediction. To systematically verify this, we introduce MATCHA, a novel Answer-Conditioned Probing framework. Unlike standard evaluations that focus on final output accuracy, MATCHA isolates the reasoning phase by conditioning generation on the model’s predicted answer, allowing us to stress-test the stability of the rationale itself. Our experiments reveal a critical vulnerability: under imperceptible input perturbations, LLMs frequently maintain the correct answer while generating inconsistent or nonsensical reasoning – effectively being “Right for the Wrong Reasons”. Using LLM judges to quantify this robustness gap, we find that multi-step and commonsense tasks are significantly more susceptible to this decoupling than logical tasks. Furthermore, we demonstrate that adversarial examples generated by MATCHA transfer non-trivially to black-box models. Our findings expose the illusion of CoT robustness and underscore the need for future architectures that enforce genuine answer-reasoning consistency rather than mere surface-level accuracy.

    Submission history

    From: Enyi Jiang [view email]
    [v1]
    Fri, 23 May 2025 02:42:16 UTC (1,459 KB)
    [v2]
    Wed, 4 Feb 2026 21:36:09 UTC (1,459 KB)

    Decoupling Hypothesis LLM Probing Reasoning
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