DS1 spectrogram: Budget-aware Test-time Scaling via Discriminative Verification

Budget-aware Test-time Scaling via Discriminative Verification

2510.14913

Authors

Sijun Tan,Yuqi Chen,Siyuan Zhuang,Tianjun Zhang,Raluca Ada Popa

Abstract

Test-time scaling is a powerful strategy for boosting the performance of large language models on complex reasoning tasks. While state-of-the-art approaches often employ generative verifiers to select the best solution from a pool of candidates, this method incurs prohibitive computational costs, limiting its practicality.

In this work, we shift the focus to a more budget-aware paradigm: discriminative verification. We conduct a thorough empirical analysis and demonstrate that while discriminative verifiers may underperform in isolation, combining them with self-consistency in a hybrid approach creates a powerful and efficient test-time scaling mechanism.

Notably, under a fixed compute budget, this hybrid approach surpasses state-of-the-art generative verification by a significant margin: achieving up to 15.3% higher accuracy on AIME2025. Our findings establish that for practical, real-world applications, budget-aware scaling with discriminative verifiers is not only a "free" upgrade over self-consistency, but also a more effective and efficient alternative to costly generative techniques.

Code is available at https://github.com/wang-research-lab/verification.

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