Why Crowd Wisdom Strategies Fail for LLM Truthfulness

Dataemia
2 Min Read


[Submitted on 20 Feb 2026]

View a PDF of the paper titled Consensus is Not Verification: Why Crowd Wisdom Strategies Fail for LLM Truthfulness, by Yegor Denisov-Blanch and 6 other authors

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Abstract:Pass@k and other methods of scaling inference compute can improve language model performance in domains with external verifiers, including mathematics and code, where incorrect candidates can be filtered reliably. This raises a natural question: can we similarly scale compute to elicit gains in truthfulness for domains without convenient verification? We show that across five benchmarks and models, surprisingly, it cannot. Even at 25x the inference cost of naive sampling, polling-style aggregation yields no consistent accuracy gains over single-sample baselines and often amplifies shared misconceptions. We find that under uncertainty, models are better at predicting what other models will say within model ensembles than at identifying what is true, revealing a separation between social prediction and truth verification. Across models and benchmarks, aggregation fails to provide a robust truth signal because language model errors are strongly correlated. The source of correlation goes beyond any individual benchmark: we show that even when conditioned on out of distribution random strings and asked to produce pseudo-random outputs, different models produce correlated outputs. Confidence-based weighting provides no benefit because self-reported confidence fails to reliably distinguish correct from incorrect answers. These results delineate a boundary for inference-time scaling: in verified domains, additional samples provide more candidates for a verifier to filter; in unverified domains, additional samples merely reinforce shared misconceptions.

Submission history

From: Yegor Denisov-Blanch [view email]
[v1]
Fri, 20 Feb 2026 03:35:01 UTC (5,779 KB)



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