Lie Algebra Canonicalization: Equivariant Neural Operators under arbitrary Lie Groups
The quest for robust and generalizable machine learning models has driven recent interest in exploiting symmetries through equivariant neural networks. In the context of PDE solvers, recent works have shown that Lie point symmetries can be a useful inductive bias for Physics-Informed Neural Networks...
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Main Authors | , , , , , |
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Format | Journal Article |
Language | English |
Published |
03.10.2024
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Subjects | |
Online Access | Get full text |
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Summary: | The quest for robust and generalizable machine learning models has driven
recent interest in exploiting symmetries through equivariant neural networks.
In the context of PDE solvers, recent works have shown that Lie point
symmetries can be a useful inductive bias for Physics-Informed Neural Networks
(PINNs) through data and loss augmentation. Despite this, directly enforcing
equivariance within the model architecture for these problems remains elusive.
This is because many PDEs admit non-compact symmetry groups, oftentimes not
studied beyond their infinitesimal generators, making them incompatible with
most existing equivariant architectures. In this work, we propose Lie aLgebrA
Canonicalization (LieLAC), a novel approach that exploits only the action of
infinitesimal generators of the symmetry group, circumventing the need for
knowledge of the full group structure. To achieve this, we address existing
theoretical issues in the canonicalization literature, establishing connections
with frame averaging in the case of continuous non-compact groups. Operating
within the framework of canonicalization, LieLAC can easily be integrated with
unconstrained pre-trained models, transforming inputs to a canonical form
before feeding them into the existing model, effectively aligning the input for
model inference according to allowed symmetries. LieLAC utilizes standard Lie
group descent schemes, achieving equivariance in pre-trained models. Finally,
we showcase LieLAC's efficacy on tasks of invariant image classification and
Lie point symmetry equivariant neural PDE solvers using pre-trained models. |
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DOI: | 10.48550/arxiv.2410.02698 |