학술논문

19 Parameters Is All You Need: Tiny Neural Networks for Particle Physics
Document Type
Working Paper
Source
Subject
High Energy Physics - Phenomenology
Computer Science - Machine Learning
High Energy Physics - Experiment
Language
Abstract
As particle accelerators increase their collision rates, and deep learning solutions prove their viability, there is a growing need for lightweight and fast neural network architectures for low-latency tasks such as triggering. We examine the potential of one recent Lorentz- and permutation-symmetric architecture, PELICAN, and present its instances with as few as 19 trainable parameters that outperform generic architectures with tens of thousands of parameters when compared on the binary classification task of top quark jet tagging.
Comment: 5 pages, submitted to the "Machine Learning and the Physical Sciences" NeurIPS 2023 Workshop