Poster
in
Workshop: 2nd AI for Math Workshop @ ICML 2025
Graph Neural Networks for Tensor Product Decompositions of Lie Algebra Representations
Max Vargas · Helen Jenne · Davis Brown · Henry Kvinge
Abstract:
Advances in AI promise to accelerate progress in mathematics by automating the process of pattern recognition within large mathematically-motivated datasets. In this extended abstract, we report on work-in-progress using graph neural networks (GNNs) to predict properties of tensor products of Lie algebra representations. First, we impose a graph structure on the weight lattice associated to a finite-dimensional semisimple Lie algabra $\mathfrak{g}$. This structure is used to generate datasets for predicting decomposition factors of tensor products between finite-dimensional irreducible representations of $\mathfrak{g}$. We find that while this problem quickly grows in complexity, GNNs have the potential to learn algorithmic rules for predicting the structure of tensor products.
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