AI RESEARCH

Symmetry-Aware Generative Modeling through Learned Canonicalization

arXiv CS.LG

ArXi:2501.07773v3 Announce Type: replace Generative modeling of symmetric densities has a range of applications in AI for science, from drug discovery to physics simulations. The existing generative modeling paradigm for invariant densities combines an invariant prior with an equivariant generative process. However, we observe that this technique is not necessary and has several drawbacks resulting from the limitations of equivariant networks. Instead, we propose to model a learned slice of the density so that only one representative element per orbit is learned.