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  4. What graph neural networks cannot learn: depth vs width
 
conference paper not in proceedings

What graph neural networks cannot learn: depth vs width

Loukas, Andreas  
2020
International Conference on Learning Representations

This paper studies the expressive power of graph neural networks falling within the message-passing framework (GNNmp). Two results are presented. First, GNNmp are shown to be Turing universal under sufficient conditions on their depth, width, node attributes, and layer expressiveness. Second, it is discovered that GNNmp can lose a significant portion of their power when their depth and width is restricted. The proposed impossibility statements stem from a new technique that enables the repurposing of seminal results from distributed computing and leads to lower bounds for an array of decision, optimization, and estimation problems involving graphs. Strikingly, several of these problems are deemed impossible unless the product of a GNNmp's depth and width exceeds a polynomial of the graph size; this dependence remains significant even for tasks that appear simple or when considering approximation.

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Type
conference paper not in proceedings
Author(s)
Loukas, Andreas  
Date Issued

2020

Total of pages

17

Subjects

graph neural networks

•

deep learning

•

capacity

•

impossibility results

•

lower bounds

•

expressive power

•

ml-ai

URL
https://openreview.net/forum?id=B1l2bp4YwS
Editorial or Peer reviewed

REVIEWED

Written at

EPFL

EPFL units
LTS2  
Event nameEvent placeEvent date
International Conference on Learning Representations

Addis Ababa, Ethiopia

April 26-30, 2020

Available on Infoscience
January 28, 2020
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/164972
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