Publication:

Incompleteness of graph neural networks for points clouds in three dimensions

cris.lastimport.scopus

2024-08-07T12:13:34Z

cris.legacyId

298890

cris.virtual.author-scopus

23088470100

cris.virtual.department

COSMO

cris.virtual.parent-organization

IMX

cris.virtual.parent-organization

STI

cris.virtual.parent-organization

EPFL

cris.virtual.rid

C-2393-2009

cris.virtual.sciperId

235586

cris.virtual.unitId

12743

cris.virtual.unitManager

Ceriotti, Michele

cris.virtualsource.author-scopus

17498d23-5aeb-49dc-8258-7124fc2fbbcc

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17498d23-5aeb-49dc-8258-7124fc2fbbcc

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17498d23-5aeb-49dc-8258-7124fc2fbbcc

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e0958e27-867a-42ef-be82-c21f7a15df4f

cris.virtualsource.parent-organization

e0958e27-867a-42ef-be82-c21f7a15df4f

cris.virtualsource.parent-organization

e0958e27-867a-42ef-be82-c21f7a15df4f

cris.virtualsource.parent-organization

e0958e27-867a-42ef-be82-c21f7a15df4f

cris.virtualsource.rid

17498d23-5aeb-49dc-8258-7124fc2fbbcc

cris.virtualsource.sciperId

17498d23-5aeb-49dc-8258-7124fc2fbbcc

cris.virtualsource.unitId

e0958e27-867a-42ef-be82-c21f7a15df4f

cris.virtualsource.unitManager

e0958e27-867a-42ef-be82-c21f7a15df4f

datacite.rights

metadata-only

dc.contributor.author

Pozdnyakov, Sergey N.

dc.contributor.author

Ceriotti, Michele

dc.date.accessioned

2022-12-19T02:32:34

dc.date.available

2022-12-19T02:32:34

dc.date.created

2022-12-19

dc.date.issued

2022-12-01

dc.date.modified

2025-01-23T14:49:21.769622Z

dc.description.abstract

Graph neural networks (GNN) are very popular methods in machine learning and have been applied very successfully to the prediction of the properties of molecules and materials. First-order GNNs are well known to be incomplete, i.e. there exist graphs that are distinct but appear identical when seen through the lens of the GNN. More complicated schemes have thus been designed to increase their resolving power. Applications to molecules (and more generally, point clouds), however, add a geometric dimension to the problem. The most straightforward and prevalent approach to construct graph representation for molecules regards atoms as vertices in a graph and draws a bond between each pair of atoms within a chosen cutoff. Bonds can be decorated with the distance between atoms, and the resulting 'distance graph NNs' (dGNN) have empirically demonstrated excellent resolving power and are widely used in chemical ML, with all known indistinguishable configurations being resolved in the fully-connected limit, which is equivalent to infinite or sufficiently large cutoff. Here we present a counterexample that proves that dGNNs are not complete even for the restricted case of fully-connected graphs induced by 3D atom clouds. We construct pairs of distinct point clouds whose associated graphs are, for any cutoff radius, equivalent based on a first-order Weisfeiler-Lehman (WL) test. This class of degenerate structures includes chemically-plausible configurations, both for isolated structures and for infinite structures that are periodic in 1, 2, and 3 dimensions. The existence of indistinguishable configurations sets an ultimate limit to the expressive power of some of the well-established GNN architectures for atomistic machine learning. Models that explicitly use angular or directional information in the description of atomic environments can resolve this class of degeneracies.

dc.description.sponsorship

COSMO

dc.identifier.doi

10.1088/2632-2153/aca1f8

dc.identifier.isi

WOS:000889681900001

dc.identifier.uri

https://infoscience.epfl.ch/handle/20.500.14299/193273

dc.publisher

IOP Publishing Ltd

dc.publisher.place

Bristol

dc.relation.issn

2632-2153

dc.relation.journal

Machine Learning-Science And Technology

dc.source

WoS

dc.subject

Computer Science, Artificial Intelligence

dc.subject

Computer Science, Interdisciplinary Applications

dc.subject

Multidisciplinary Sciences

dc.subject

Computer Science

dc.subject

Science & Technology - Other Topics

dc.subject

machine learning

dc.subject

convolutional neural networks

dc.subject

chemistry

dc.title

Incompleteness of graph neural networks for points clouds in three dimensions

dc.type

text::journal::journal article::research article

dspace.entity.type

Publication

dspace.legacy.oai-identifier

oai:infoscience.epfl.ch:298890

epfl.curator.email

jorge.rodriguesdematos@epfl.ch

epfl.legacy.itemtype

Journal Articles

epfl.legacy.submissionform

ARTICLE

epfl.oai.currentset

OpenAIREv4

epfl.oai.currentset

STI

epfl.oai.currentset

article

epfl.peerreviewed

REVIEWED

epfl.publication.version

http://purl.org/coar/version/c_970fb48d4fbd8a85

epfl.writtenAt

EPFL

oaire.citation.articlenumber

045020

oaire.citation.issue

4

oaire.citation.volume

3

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