En poursuivant votre navigation sur ce site, vous acceptez l'utilisation d'un simple cookie d'identification. Aucune autre exploitation n'est faite de ce cookie. OK
1

Subgraph-based networks for expressive, efficient, and domain-independent graph learning

Bookmarks Report an error
Multi angle
Authors : Maron, Haggai (Author of the conference)
CIRM (Publisher )

Loading the player...

Abstract : While message-passing neural networks (MPNNs) are the most popular architectures for graph learning, their expressive power is inherently limited. In order to gain increased expressive power while retaining efficiency, several recent works apply MPNNs to subgraphs of the original graph. As a starting point, the talk will introduce the Equivariant Subgraph Aggregation Networks (ESAN) architecture, which is a representative framework for this class of methods. In ESAN, each graph is represented as a set of subgraphs, selected according to a predefined policy. The sets of subgraphs are then processed using an equivariant architecture designed specifically for this purpose. I will then present a recent follow-up work that revisits the symmetry group suggested in ESAN and suggests that a more precise choice can be made if we restrict our attention to a specific popular family of subgraph selection policies. We will see that using this observation, one can make a direct connection between subgraph GNNs and Invariant Graph Networks (IGNs), thus providing new insights into subgraph GNNs' expressive power and design space.

Keywords : graph neural networks; Weisfeiler-leman; subgraphs

MSC Codes :
05C60 - Isomorphism problems (reconstruction conjecture, perfect graphs, etc.)
68R10 - Graph theory in connection with computer science
68T05 - Learning and adaptive systems

Additional resources :
https://www.cirm-math.fr/RepOrga/2588/Slides/maron.pdf

    Information on the Video

    Film maker : Hennenfent, Guillaume
    Language : English
    Available date : 05/12/2022
    Conference Date : 08/11/2022
    Subseries : Research talks
    arXiv category : Machine Learning
    Mathematical Area(s) : Computer Science
    Format : MP4 (.mp4) - HD
    Video Time : 00:49:40
    Targeted Audience : Researchers ; Graduate Students ; Doctoral Students, Post-Doctoral Students
    Download : https://videos.cirm-math.fr/2022-11-08_Maron.mp4

Information on the Event

Event Title : Machine Learning and Signal Processing on Graphs / Apprentissage automatique et traitement du signal sur graphes
Event Organizers : Keriven, Nicolas ; Loukas, Andreas ; Pustelnik, Nelly ; Tremblay, Nicolas ; Vaiter, Samuel
Dates : 07/11/2022 - 11/11/2022
Event Year : 2022
Event URL : https://conferences.cirm-math.fr/2588.html

Citation Data

DOI : 10.24350/CIRM.V.19982003
Cite this video as: Maron, Haggai (2022). Subgraph-based networks for expressive, efficient, and domain-independent graph learning. CIRM. Audiovisual resource. doi:10.24350/CIRM.V.19982003
URI : http://dx.doi.org/10.24350/CIRM.V.19982003

See Also

Bibliography



Imagette Video

Bookmarks Report an error