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Dyve: Thinking Fast and Slow for Dynamic Process Verification

Dyve, a dynamic process verifier, enhances error detection in large language models by integrating fast and slow thinking processes and leveraging a consensus-filtered process supervision technique with Monte Carlo estimation.

Year
2025
Venue
arXiv 2025
Authors
5
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arxiv.org/abs/2502.11157ARXIV-DEFAULT
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Abstract

We present Dyve, a dynamic process verifier that enhances reasoning error detection in large language models by integrating fast and slow thinking, inspired by Kahneman's Systems Theory. Dyve adaptively applies immediate token-level confirmation System 1 for straightforward steps and comprehensive analysis System 2 for complex ones. Leveraging a novel step-wise consensus-filtered process supervision technique, combining Monte Carlo estimation with LLM based evaluation, Dyve curates high-quality supervision signals from noisy data. Experimental results on ProcessBench and the MATH dataset confirm that Dyve significantly outperforms existing process-based verifiers and boosts performance in Best-of-N settings.

Authors

5