학술논문

Explaining machine-learned particle-flow reconstruction
Document Type
Working Paper
Source
Subject
Physics - Data Analysis, Statistics and Probability
Computer Science - Machine Learning
High Energy Physics - Experiment
Physics - Instrumentation and Detectors
Language
Abstract
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 paper, 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 gain insight into the model's decision-making.
Comment: 5 pages, 3 figures. Accepted to Machine Learning for Physical Sciences NeurIPS 2021 workshop