Lorentz group equivariant autoencoders

Author:

Hao ZichunORCID,Kansal RaghavORCID,Duarte JavierORCID,Chernyavskaya NadezdaORCID

Abstract

AbstractThere has been significant work recently in developing machine learning (ML) models in high energy physics (HEP) for tasks such as classification, simulation, and anomaly detection. Often these models are adapted from those designed for datasets in computer vision or natural language processing, which lack inductive biases suited to HEP data, such as equivariance to its inherent symmetries. Such biases have been shown to make models more performant and interpretable, and reduce the amount of training data needed. To that end, we develop the Lorentz group autoencoder (LGAE), an autoencoder model equivariant with respect to the proper, orthochronous Lorentz group $$\textrm{SO}^+(3,1)$$ SO + ( 3 , 1 ) , with a latent space living in the representations of the group. We present our architecture and several experimental results on jets at the LHC and find it outperforms graph and convolutional neural network baseline models on several compression, reconstruction, and anomaly detection metrics. We also demonstrate the advantage of such an equivariant model in analyzing the latent space of the autoencoder, which can improve the explainability of potential anomalies discovered by such ML models.

Funder

European Research Council

U.S. Department of Energy

National Science Foundation

Publisher

Springer Science and Business Media LLC

Subject

Physics and Astronomy (miscellaneous),Engineering (miscellaneous)

Cited by 13 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Foundations of automatic feature extraction at LHC–point clouds and graphs;The European Physical Journal Special Topics;2024-09-11

2. Anomalies, representations, and self-supervision;SciPost Physics Core;2024-08-16

3. Opportunities and challenges of graph neural networks in electrical engineering;Nature Reviews Electrical Engineering;2024-08-05

4. Equivariant, safe and sensitive — graph networks for new physics;Journal of High Energy Physics;2024-07-26

5. Interpretable deep learning models for the inference and classification of LHC data;Journal of High Energy Physics;2024-05-02

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