Publications

You can also find my articles on my Google Scholar profile.

Conference Papers


Decoder ensembling for learned latent geometries

Published in GRaM Workshop @ ICML 2024, 2024

Latent space geometry provides a rigorous and empirically valuable framework for interacting with the latent variables of deep generative models. This approach reinterprets Euclidean latent spaces as Riemannian through a pull-back metric, allowing for a standard differential geometric analysis of the latent space. Unfortunately, data manifolds are generally compact and easily disconnected or filled with holes, suggesting a topological mismatch to the Euclidean latent space. The most established solution to this mismatch is to let uncertainty be a proxy for topology, but in neural network models, this is often realized through crude heuristics that lack principle and generally do not scale to high-dimensional representations. We propose using ensembles of decoders to capture model uncertainty and show how to easily compute geodesics on the associated expected manifold. Empirically, we find this simple and reliable, thereby coming one step closer to easy-to-use latent geometries.

Recommended citation: Syrota, Stas, Pablo Moreno-Munoz, and Søren Hauberg. "Decoder ensembling for learned latent geometries." arXiv preprint arXiv:2408.07507 (2024).
Download Paper