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Main Authors: Grizzi, Vitor F., Voetberg, Margaret, Hewes, V, Cerati, Giuseppe, Meidani, Hadi
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2509.10684
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author Grizzi, Vitor F.
Voetberg, Margaret
Hewes, V
Cerati, Giuseppe
Meidani, Hadi
author_facet Grizzi, Vitor F.
Voetberg, Margaret
Hewes, V
Cerati, Giuseppe
Meidani, Hadi
contents Graph neural networks have recently shown strong promise for event reconstruction tasks in Liquid Argon Time Projection Chambers, yet their performance remains limited for underrepresented classes of particles, such as Michel electrons. In this work, we investigate physics-informed strategies to improve semantic segmentation within the NuGraph2 architecture. We explore three complementary approaches: (i) enriching the input representation with context-aware features derived from detector geometry and track continuity, (ii) introducing auxiliary decoders to capture class-level correlations, and (iii) incorporating energy-based regularization terms motivated by Michel electron energy distributions. Experiments on MicroBooNE public datasets show that physics-inspired feature augmentation yields the largest gains, particularly boosting Michel electron precision and recall by disentangling overlapping latent space regions. In contrast, auxiliary decoders and energy-regularization terms provided limited improvements, partly due to the hit-level nature of NuGraph2, which lacks explicit particle- or event-level representations. Our findings highlight that embedding physics context directly into node-level inputs is more effective than imposing task-specific auxiliary losses, and suggest that future hierarchical architectures such as NuGraph3, with explicit particle- and event-level reasoning, will provide a more natural setting for advanced decoders and physics-based regularization. The code for this work is publicly available on Github at https://github.com/vitorgrizzi/nugraph_phys/tree/main_phys.
format Preprint
id arxiv_https___arxiv_org_abs_2509_10684
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle NuGraph2 with Context-Aware Inputs: Physics-Inspired Improvements in Semantic Segmentation
Grizzi, Vitor F.
Voetberg, Margaret
Hewes, V
Cerati, Giuseppe
Meidani, Hadi
High Energy Physics - Experiment
Graph neural networks have recently shown strong promise for event reconstruction tasks in Liquid Argon Time Projection Chambers, yet their performance remains limited for underrepresented classes of particles, such as Michel electrons. In this work, we investigate physics-informed strategies to improve semantic segmentation within the NuGraph2 architecture. We explore three complementary approaches: (i) enriching the input representation with context-aware features derived from detector geometry and track continuity, (ii) introducing auxiliary decoders to capture class-level correlations, and (iii) incorporating energy-based regularization terms motivated by Michel electron energy distributions. Experiments on MicroBooNE public datasets show that physics-inspired feature augmentation yields the largest gains, particularly boosting Michel electron precision and recall by disentangling overlapping latent space regions. In contrast, auxiliary decoders and energy-regularization terms provided limited improvements, partly due to the hit-level nature of NuGraph2, which lacks explicit particle- or event-level representations. Our findings highlight that embedding physics context directly into node-level inputs is more effective than imposing task-specific auxiliary losses, and suggest that future hierarchical architectures such as NuGraph3, with explicit particle- and event-level reasoning, will provide a more natural setting for advanced decoders and physics-based regularization. The code for this work is publicly available on Github at https://github.com/vitorgrizzi/nugraph_phys/tree/main_phys.
title NuGraph2 with Context-Aware Inputs: Physics-Inspired Improvements in Semantic Segmentation
topic High Energy Physics - Experiment
url https://arxiv.org/abs/2509.10684