Redirecting to original paper in 30 seconds...

Click below to go immediately or wait for automatic redirect

arxiv_ml 90% Match Research Paper Physicists,ML Researchers,Data Scientists in scientific domains,AI Safety Researchers 17 hours ago

SEAL - A Symmetry EncourAging Loss for High Energy Physics

ai-safety › robustness
📄 Abstract

Abstract: Physical symmetries provide a strong inductive bias for constructing functions to analyze data. In particular, this bias may improve robustness, data efficiency, and interpretability of machine learning models. However, building machine learning models that explicitly respect symmetries can be difficult due to the dedicated components required. Moreover, real-world experiments may not exactly respect fundamental symmetries at the level of finite granularities and energy thresholds. In this work, we explore an alternative approach to create symmetry-aware machine learning models. We introduce soft constraints that allow the model to decide the importance of added symmetries during the learning process instead of enforcing exact symmetries. We investigate two complementary approaches, one that penalizes the model based on specific transformations of the inputs and one inspired by group theory and infinitesimal transformations of the inputs. Using top quark jet tagging and Lorentz equivariance as examples, we observe that the addition of the soft constraints leads to more robust performance while requiring negligible changes to current state-of-the-art models.

Key Contributions

SEAL (Symmetry EncourAging Loss) introduces a novel approach to build symmetry-aware machine learning models by using soft constraints instead of hard enforcement. This allows models to learn the importance of symmetries during training, improving robustness, data efficiency, and interpretability, demonstrated on top quark jet tagging.

Business Value

Enhances the reliability and efficiency of AI models used in scientific research and other domains where physical laws or known invariances are crucial, leading to more trustworthy and data-efficient AI.