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Evaluating the False Trust Engendered by LLM Explanations

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abstract

Large Language Models (LLMs) and Large Reasoning Models (LRMs) are increasingly used for critical tasks, yet they provide no guarantees about the correctness of their solutions. Users must decide whether to trust the model's answer, aided by reasoning traces, their summaries, or post-hoc generated explanations. These reasoning traces, despite evidence that they are neither faithful representations of the model's computations nor necessarily semantically meaningful, are often interpreted as provenance explanations. It is unclear whether explanations or reasoning traces help users identify when the AI is incorrect, or whether they simply persuade users to trust the AI regardless. In this paper, we take a user-centered approach and develop an evaluation protocol to study how different explanation types affect users' ability to judge the correctness of AI-generated answers and engender false trust in the users. We conduct a between-subject user study, simulating a setting where users do not have the means to verify the solution and analyze the false trust engendered by commonly used LLM explanations - reasoning traces, their summaries and post-hoc explanations. We also test a contrastive dual explanation setting where we present arguments for and against the AI's answer. We find that reasoning traces and post-hoc explanations are persuasive but not informative: they increase user acceptance of LLM predictions regardless of their correctness. In contrast, dual explanation is the only condition that genuinely improves users' ability to distinguish correct from incorrect AI outputs.

fields

cs.CL 1

years

2026 1

verdicts

UNVERDICTED 1

representative citing papers

Uncertainty-Aware Generation and Decision-Making Under Ambiguity

cs.CL · 2026-06-29 · unverdicted · novelty 4.0

Uncertainty-aware algorithms based on Bayesian decision theory improve generation utility on tutoring and reviewing tasks while risk-averse methods can degrade performance under high ambiguity, with conformal prediction providing guarantees.

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  • Uncertainty-Aware Generation and Decision-Making Under Ambiguity cs.CL · 2026-06-29 · unverdicted · none · ref 8 · internal anchor

    Uncertainty-aware algorithms based on Bayesian decision theory improve generation utility on tutoring and reviewing tasks while risk-averse methods can degrade performance under high ambiguity, with conformal prediction providing guarantees.