Read original ↗
paperarXivTrust 82 · PrimaryPublished 2d agoLive · yesterday

Diffeomorphic Optimization

Generative models learn data distributions that reside on a low-dimensional manifold within a higher-dimensional ambient space. Optimizing differentiable objectives on this manifold is challenging: the ambient loss landscape is high-dimensional, rugged, and non-convex. Direct gradient descent, blind to the manifold's geometry, quickly drifts off it. Diffeomorphic optimization starts from the observation that diffusion and flow models provide a map from the data manifold to a much simpler base space in which we perform gradient descent. Using differential geometry, we show this is equivalent to

Lineage graph

Paper → model → repo connections mined from source citations (Tier-1 exact match).

Covers

Related across the graph

Topics