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research article

Benefits of Max Pooling in Neural Networks: Theoretical and Experimental Evidence

Matoba, Kyle Michael  
•
Dimitriadis, Nikolaos  
•
Fleuret, François  
September 2023
Transactions on Machine Learning Research

When deep neural networks became state of the art image classifiers, numerous max pooling operations were an important component of the architecture. However, modern computer vision networks typically have few, if any, max pooling operations. To understand whether this trend is justified, we develop a mathematical framework analyzing ReLU based approximations of max pooling, and prove a sense in which max pooling cannot be replicated. We formulate and analyze a novel class of optimal approximations, and find that the residual can be made exponentially small in the kernel size, but only with an exponentially wide approximation. This work gives a theoretical basis for understanding the reduced use of max pooling in newer architectures. It also enables us to establish an empirical observation about natural images: since max pooling does not seem necessary, the inputs on which max pooling is distinct – those with a large difference between the max and other values – are not prevalent.

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Type
research article
Scopus ID

2-s2.0-86000157639

Author(s)
Matoba, Kyle Michael  
Dimitriadis, Nikolaos  

EPFL

Fleuret, François  
Date Issued

2023-09

Published in
Transactions on Machine Learning Research
Volume

2023

Issue

2

Start page

127

End page

136

Subjects

Animal-Robot Interaction

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Bio-Hybrid Socialization

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Bio-Hybrids

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Ecology

•

Ecosystem Hacking

•

Honeybees

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Mass Extinction

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Organismic Augmentation

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Smart Hives

Editorial or Peer reviewed

REVIEWED

Written at

EPFL

EPFL units
LTS4  
Available on Infoscience
March 27, 2025
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/248280
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