Pulling back information geometry
Arvanitidis, Georgios, González-Duque, Miguel, Pouplin, Alison, Kalatzis, Dimitris, Hauberg, Søren
Latent space geometry has shown itself to provide a rich and rigorous framework for interacting with the latent variables of deep generative models. The existing theory, however, relies on the decoder being a Gaussian distribution as its simple reparametrization allows us to interpret the generating process as a random projection of a deterministic manifold. Consequently, this approach breaks down when applied to decoders that are not as easily reparametrized. We here propose to use the Fisher-Rao metric associated with the space of decoder distributions as a reference metric, which we pull back to the latent space. We show that we can achieve meaningful latent geometries for a wide range of decoder distributions for which the previous theory was not applicable, opening the door to `black box' latent geometries.
Jun-9-2021
- Country:
- Europe > Germany > Baden-Württemberg > Tübingen Region > Tübingen (0.14)
- Genre:
- Research Report (0.50)
- Technology: