Bulletin of the American Physical Society
APS April Meeting 2022
Volume 67, Number 6
Saturday–Tuesday, April 9–12, 2022; New York
Session X09: Data Analysis, AI and ML IV
10:45 AM–12:09 PM,
Tuesday, April 12, 2022
Room: Salon 3
Sponsoring
Units:
DPF GDS
Chair: Matthew Bellis, Siena College
Abstract: X09.00003 : Explaining machine-learned particle-flow reconstruction*
11:09 AM–11:21 AM
Presenter:
Farouk Mokhtar
Authors:
Farouk Mokhtar
Raghav Kansal
(University of California, San Diego)
Daniel C Diaz
(University of California, San Diego)
Javier M Duarte
(University of California, San Diego)
Joosep Pata
(National Institute of Chemical Physics and Biophysics (NICPB))
Maurizio Pierini
(European Organization for Nuclear Research (CERN))
Jean-Roch Vlimant
(California Institute of Technology)
The particle-flow (PF) algorithm is used in general-purpose particle detectors to reconstruct a comprehensive particle-level view of the collision by combining information from different subdetectors. A graph neural network (GNN) model, known as the machine-learned particle-flow (MLPF) algorithm, has been developed to substitute the rule-based PF algorithm. However, understanding the model’s decision making is not straightforward, especially given the complexity of the set-to-set prediction task, dynamic graph building, and message-passing steps. In this presentation, we adapt the layerwise-relevance propagation technique for GNNs and apply it to the MLPF algorithm to gauge the relevant nodes and features for its predictions. Through this process, we can gain insight into the model’s decision-making.
*Halıcıoglu Data Science Institute (HDSI)Institute for Research and Innovation in Software for High Energy Physics (IRIS-HEP)US Department of Energy (DOE)
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