Abstract
DeepConf enhances reasoning efficiency and performance by filtering low-quality reasoning traces using model-internal confidence signals, achieving high accuracy and reducing token generation.
Large Language Models (LLMs) have shown great potential in reasoning tasks through test-time scaling methods like self-consistency with majority voting. However, this approach often leads to diminishing returns in accuracy and high computational overhead. To address these challenges, we introduce Deep Think with Confidence (DeepConf), a simple yet powerful method that enhances both reasoning efficiency and performance at test time. DeepConf leverages model-internal confidence signals to dynamically filter out low-quality reasoning traces during or after generation. It requires no additional model training or hyperparameter tuning and can be seamlessly integrated into existing serving frameworks. We evaluate DeepConf across a variety of reasoning tasks and the latest open-source models, including Qwen 3 and GPT-OSS series. Notably, on challenging benchmarks such as AIME 2025, DeepConf@512 achieves up to 99.9% accuracy and reduces generated tokens by up to 84.7% compared to full parallel thinking.
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Deep Think with Confidence (DeepConf) is a parallel thinking method that enhances both LLM reasoning performance and efficiency at test time. It leverages model-internal confidence signals to dynamically filter low-quality reasoning traces during or after generation. It requires no additional model training or hyperparameter tuning and can be seamlessly integrated into existing serving frameworks. It achieves up to 99.9% accuracy on AIME 2025 while reducing generated tokens by up to 84.7% compared to the standard thinking approaches.
We also propose the similar idea in our previous efficient test-time scaling(https://arxiv.org/pdf/2503.00031)
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