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Hauptverfasser: Szatkowski, Filip, Będkowski, Patryk, Devoto, Alessio, Dubiński, Jan, Minervini, Pasquale, Piórczyński, Mikołaj, Scardapane, Simone, Wójcik, Bartosz
Format: Preprint
Veröffentlicht: 2025
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Online-Zugang:https://arxiv.org/abs/2509.00454
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author Szatkowski, Filip
Będkowski, Patryk
Devoto, Alessio
Dubiński, Jan
Minervini, Pasquale
Piórczyński, Mikołaj
Scardapane, Simone
Wójcik, Bartosz
author_facet Szatkowski, Filip
Będkowski, Patryk
Devoto, Alessio
Dubiński, Jan
Minervini, Pasquale
Piórczyński, Mikołaj
Scardapane, Simone
Wójcik, Bartosz
contents Activation sparsity is an intriguing property of deep neural networks that has been extensively studied in ReLU-based models, due to its advantages for efficiency, robustness, and interpretability. However, methods relying on exact zero activations do not directly apply to modern Large Language Models (LLMs), leading to fragmented, model-specific strategies for LLM activation sparsity and a gap in its general understanding. In this work, we introduce a general framework for evaluating sparsity robustness in contemporary LLMs and conduct a systematic investigation of this phenomenon in their feedforward~(FFN) layers. Our results uncover universal properties of activation sparsity across diverse model families and scales. Importantly, we observe that the potential for effective activation sparsity grows with model size, highlighting its increasing relevance as models scale. Furthermore, we present the first study of activation sparsity in diffusion-based LLMs. Overall, our work provides a comprehensive perspective and practical guidance for harnessing activation sparsity in LLM design and acceleration.
format Preprint
id arxiv_https___arxiv_org_abs_2509_00454
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Universal Properties of Activation Sparsity in Modern Large Language Models
Szatkowski, Filip
Będkowski, Patryk
Devoto, Alessio
Dubiński, Jan
Minervini, Pasquale
Piórczyński, Mikołaj
Scardapane, Simone
Wójcik, Bartosz
Machine Learning
Activation sparsity is an intriguing property of deep neural networks that has been extensively studied in ReLU-based models, due to its advantages for efficiency, robustness, and interpretability. However, methods relying on exact zero activations do not directly apply to modern Large Language Models (LLMs), leading to fragmented, model-specific strategies for LLM activation sparsity and a gap in its general understanding. In this work, we introduce a general framework for evaluating sparsity robustness in contemporary LLMs and conduct a systematic investigation of this phenomenon in their feedforward~(FFN) layers. Our results uncover universal properties of activation sparsity across diverse model families and scales. Importantly, we observe that the potential for effective activation sparsity grows with model size, highlighting its increasing relevance as models scale. Furthermore, we present the first study of activation sparsity in diffusion-based LLMs. Overall, our work provides a comprehensive perspective and practical guidance for harnessing activation sparsity in LLM design and acceleration.
title Universal Properties of Activation Sparsity in Modern Large Language Models
topic Machine Learning
url https://arxiv.org/abs/2509.00454