High-Rank Irreducible Cartesian Tensor Decomposition and Bases of Equivariant Spaces
Shihao Shao, Yikang Li, Zhouchen Lin, Qinghua Cui

TL;DR
This paper introduces a novel, efficient method for decomposing high-rank irreducible Cartesian tensors and constructing orthogonal bases for equivariant spaces, significantly advancing tensor symmetry analysis.
Contribution
It presents a new path matrices technique for ICT decomposition up to rank 9 with reduced complexity and provides a complete orthogonal basis for equivariant tensor spaces.
Findings
Decomposition matrices for ICTs up to rank 9 obtained efficiently.
Complete orthogonal bases for equivariant spaces constructed.
Method significantly speeds up tensor symmetry computations.
Abstract
Irreducible Cartesian tensors (ICTs) play a crucial role in the design of equivariant graph neural networks, as well as in theoretical chemistry and chemical physics. Meanwhile, the design space of available linear operations on tensors that preserve symmetry presents a significant challenge. The ICT decomposition and a basis of this equivariant space are difficult to obtain for high-rank tensors. After decades of research, Bonvicini (2024) has recently achieved an explicit ICT decomposition for with factorial time/space complexity. In this work we, for the first time, obtain decomposition matrices for ICTs up to rank with reduced and affordable complexity, by constructing what we call path matrices. The path matrices are obtained via performing chain-like contractions with Clebsch-Gordan matrices following the parentage scheme. We prove and leverage that the concatenation…
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Taxonomy
TopicsComputational Physics and Python Applications · Model Reduction and Neural Networks · Neural Networks and Applications
MethodsSparse Evolutionary Training
