Top-$nσ$: Not All Logits Are You Need - podcast episode cover

Top-$nσ$: Not All Logits Are You Need

Nov 20, 202421 minEp. 97
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Episode description

🤗 Paper Upvotes: 12 | cs.LG

Authors:
Chenxia Tang, Jianchun Liu, Hongli Xu, Liusheng Huang

Title:
Top-$nσ$: Not All Logits Are You Need

Arxiv:
http://arxiv.org/abs/2411.07641v1

Abstract:
Large language models (LLMs) typically employ greedy decoding or low-temperature sampling for reasoning tasks, reflecting a perceived trade-off between diversity and accuracy. We challenge this convention by introducing top-$n\sigma$, a novel sampling method that operates directly on pre-softmax logits by leveraging a statistical threshold. Our key insight is that logits naturally separate into a Gaussian-distributed noisy region and a distinct informative region, enabling efficient token filtering without complex probability manipulations. Unlike existing methods (e.g., top-$p$, min-$p$) that inadvertently include more noise tokens at higher temperatures, top-$n\sigma$ maintains a stable sampling space regardless of temperature scaling. We also provide a theoretical analysis of top-$n\sigma$ to better understand its behavior. The extensive experimental results across four reasoning-focused datasets demonstrate that our method not only outperforms existing sampling approaches but also surpasses greedy decoding, while maintaining consistent performance even at high temperatures.

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