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A Single Layer to Explain Them All:Understanding Massive Activations in Large Language Models

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We investigate the origins of massive activations in large language models (LLMs) and identify a specific layer named the \textbf{Massive Emergence Layer (ME Layer)}, that is consistently observed across model families, where massive activations first emerge and subsequently propagate to deeper layers through residual connections. We show that, within the ME Layer both the RMSNorm and the FFN parameters jointly contribute to the emergence of massive activations. Once formed, the massive activation token representation remains largely invariant across layers, reducing the diversity of hidden representations passed to the attention module. Motivated by this limitation, we propose a simple and effective method to reduce the rigidity of the massive activation token. Our approach consistently improves LLM performance across multiple tasks, including instruction following and math reasoning, in both training free and fine tuning settings. Moreover, we show that our method mitigates attention sinks by selectively weakening their influence, elucidating their origin at the hidden state level and shedding new light on principled mitigation strategies.

Zeru Shi, Zhenting Wang, Fan Yang, Qifan Wang, Ruixiang Tang• 2026

Related benchmarks

TaskDatasetResultRank
Question AnsweringARC-C
Accuracy91.3
258
Commonsense ReasoningPIQA
Accuracy84.44
213
Language UnderstandingMMLU (test)--
167
Math ReasoningGSM8K
Accuracy (GSM8K)22.14
131
Physical Commonsense ReasoningPIQA (test)
Accuracy84.44
59
Commonsense ReasoningPIQA (test)
Accuracy81.23
57
Mathematical ReasoningMathQA (test)
Accuracy41.64
52
Science Question AnsweringARC-C (test)
Accuracy91.3
48
Mathematical ReasoningMATH500
Accuracy (%)43.47
47
Science Question AnsweringARC Challenge (test)
Accuracy87.54
42
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