Higgs Boson Classification: Brain-inspired BCPNN Learning with StreamBrain
Abstract
One of the most promising approaches for data analysis and exploration of large data sets is Machine Learning techniques that are inspired by brain models. Such methods use alternative learning rules potentially more efficiently than established learning rules. In this work, we focus on the potential of brain-inspired ML for exploiting High-Performance Computing (HPC) resources to solve ML problems: we discuss the BCPNN and an HPC implementation, called StreamBrain, its computational cost, suitability to HPC systems. As an example, we use StreamBrain to analyze the Higgs Boson dataset from High Energy Physics and discriminate between background and signal classes in collisions of high-energy particle colliders. Overall, we reach up to 69.15% accuracy and 76.4% Area Under the Curve (AUC) performance.
Keywords
Cite
@article{arxiv.2107.06676,
title = {Higgs Boson Classification: Brain-inspired BCPNN Learning with StreamBrain},
author = {Martin Svedin and Artur Podobas and Steven W. D. Chien and Stefano Markidis},
journal= {arXiv preprint arXiv:2107.06676},
year = {2021}
}
Comments
Accepted for publication at The 2nd Workshop on Artificial Intelligence and Machine Learning for Scientific Applications (AI4S 2021)