An Evaluation of Representation Learning Methods in Particle Physics Foundation Models
Chen, Michael, Kansal, Raghav, Gandrakota, Abhijith, Hao, Zichun, Ngadiuba, Jennifer, Spiropulu, Maria
–arXiv.org Artificial Intelligence
We present a systematic evaluation of representation learning objectives for particle physics within a unified framework. Our study employs a shared transformer-based particle-cloud encoder with standardized preprocessing, matched sampling, and a consistent evaluation protocol on a jet classification dataset. We compare contrastive (supervised and self-supervised), masked particle modeling, and generative reconstruction objectives under a common training regimen. In addition, we introduce targeted supervised architectural modifications that achieve state-of-the-art performance on benchmark evaluations. This controlled comparison isolates the contributions of the learning objective, highlights their respective strengths and limitations, and provides reproducible baselines. We position this work as a reference point for the future development of foundation models in particle physics, enabling more transparent and robust progress across the community.
arXiv.org Artificial Intelligence
Nov-18-2025
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