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arxiv: 2402.11575 · v1 · pith:C7TRQEA7new · submitted 2024-02-18 · ✦ hep-ex · hep-ph

CaloGraph: Graph-based diffusion model for fast shower generation in calorimeters with irregular geometry

classification ✦ hep-ex hep-ph
keywords diffusionmodelcalorimeterfastgenerationgraph-basedirregularphysics
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Denoising diffusion models have gained prominence in various generative tasks, prompting their exploration for the generation of calorimeter responses. Given the computational challenges posed by detector simulations in high-energy physics experiments, the necessity to explore new machine-learning-based approaches is evident. This study introduces a novel graph-based diffusion model designed specifically for rapid calorimeter simulations. The methodology is particularly well-suited for low-granularity detectors featuring irregular geometries. We apply this model to the ATLAS dataset published in the context of the Fast Calorimeter Simulation Challenge 2022, marking the first application of a graph diffusion model in the field of particle physics.

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Cited by 2 Pith papers

Reviewed papers in the Pith corpus that reference this work. Sorted by Pith novelty score.

  1. SPADE: Split-and-Delay Embeddings for Autoregressive High-Granularity Calorimeter Simulation

    physics.ins-det 2026-06 unverdicted novelty 6.0

    SPADE is a split-and-delay embedding technique for multi-feature autoregressive transformers that achieves competitive performance on high-granularity calorimeter shower simulation.

  2. CaloTrilogy: Toward a Breakthrough in One-Step, End-to-End, Physics-Guided Shower Generation for Modern Calorimeters

    hep-ex 2026-06 unverdicted novelty 5.0

    Presents CaloTrilogy, a unified one-step generative model for high-granularity calorimeter showers that combines velocity field integration, learned priors, and physics losses to match SOTA quality.