Till innehåll på sidan

Anna-Laura Sattelberger: Geometry of Linear Neural Networks: Equivariance and Invariance under Permutation Groups

Tid: Ti 2023-10-17 kl 10.15

Plats: 3418

Videolänk: Meeting ID: 632 2469 3290

Medverkande: Anna-Laura Sattelberger (KTH)

Exportera till kalender

The set of functions parameterized by a linear fully-connected neural network is a determinantal variety. We investigate the subvariety of functions that are equivariant or invariant under the action of a permutation group. Examples of such group actions are translations or 90° rotations on images. For such equivariant or invariant subvarieties, we provide an explicit description of their dimension, their degree as well as their Euclidean distance degree, and their singularities. We fully characterize invariance for arbitrary permutation groups, and equivariance for cyclic groups. We draw conclusions for the parameterization and the design of equivariant and invariant linear networks, such as a weight sharing property, and we prove that all invariant linear functions can be learned by linear autoencoders.

This talk is based on the joint work arXiv:2309.13736 with Kathlén Kohn and Vahid Shahverdi.