Lie Neurons: Adjoint-Equivariant Neural Networks for Semisimple Lie Algebras

Lin, Tzu-Yuan, Zhu, Minghan, Ghaffari, Maani

arXiv.org Artificial Intelligence 

This paper proposes an adjoint-equivariant neural network that takes Lie algebra data as input. Various types of equivariant neural networks have been proposed in the literature, which treat the input data as elements in a vector space carrying certain types of transformations. In comparison, we aim to process inputs that are transformations between vector spaces. The change of basis on transformation is described by conjugations, inducing the adjoint-equivariance relationship that our model is designed to capture. Leveraging the invariance property of the Killing form, the proposed network is a general framework that works for arbitrary semisimple Lie algebras. Our network possesses a simple structure that can be viewed as a Lie algebraic generalization of a multi-layer perceptron (MLP). This work extends the application of equivariant feature learning. Respecting the symmetry in data is essential for deep learning models to understand the underlying objects.

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