Lorentz Local Canonicalization: How to Make Any Network Lorentz-Equivariant

Spinner, Jonas, Favaro, Luigi, Lippmann, Peter, Pitz, Sebastian, Gerhartz, Gerrit, Plehn, Tilman, Hamprecht, Fred A.

arXiv.org Machine Learning 

Lorentz-equivariant neural networks are becoming the leading architectures for high-energy physics. Current implementations rely on specialized layers, limiting architectural choices. We introduce Lorentz Local Canonicalization (LLoCa), a general framework that renders any backbone network exactly Lorentz-equivariant. Using equivariantly predicted local reference frames, we construct LLoCa-transformers and graph networks. We adapt a recent approach to geometric message passing to the non-compact Lorentz group, allowing propagation of space-time tensorial features. Data augmentation emerges from LLoCa as a special choice of reference frame. Our models surpass state-of-the-art accuracy on relevant particle physics tasks, while being $4\times$ faster and using $5$-$100\times$ fewer FLOPs.