1–4 Nov 2022
Rutgers University
US/Eastern timezone

Infra-red and collinear safe Graph Neural Networks

4 Nov 2022, 09:00
20m
Multipurpose Room (aka Livingston Hall) (Rutgers University)

Multipurpose Room (aka Livingston Hall)

Rutgers University

Livingston Student Center

Speaker

Vishal Singh Ngairangbam

Description

Hadronic signals of new-physics origin at the Large Hadron Collider can remain hidden within the copiously produced hadronic jets. Unveiling such signatures require highly performant deep-learning algorithms. We construct a class of Graph Neural Networks (GNN) in the message-passing formalism that makes the network output infra-red and collinear (IRC) safe, an important criterion satisfied within perturbative QCD calculations. Including IRC safety of the network output as a requirement in constructing the GNN improves its explainability and robustness against theoretical uncertainties in the data. We generalise Energy Flow Networks (EFN), an IRC-safe deep-learning algorithm on a point cloud, defining energy-weighted local and global readouts on GNNs. Applying the simplest of such networks to identify top quarks, W bosons and quark/gluon jets, we find that it outperforms state-of-the-art EFNs. Additionally, we obtain a general class of graph construction algorithms that give structurally invariant graphs in the IRC limit, a necessary criterion for the IRC safety of the GNN output.

Primary authors

Michael Spannowsky (University of Durham (GB)) Partha Konar (Physical Research Laboratory, Ahmedabad, Gujarat-380 009, INDIA) Vishal Singh Ngairangbam

Presentation materials