Publication | Open Access
Neural Manifold Ordinary Differential Equations
26
Citations
22
References
2020
Year
Geometric LearningEngineeringMachine LearningManifold ModelingComputer-aided DesignArbitrary ManifoldsData ScienceManifold GeneralizationGenerative ModelGlobal AnalysisRobot LearningComputational GeometryGeometric ModelingGeometric Partial Differential EquationContinuous Manifold DynamicsManifold LearningGenerative ModelsComputer ScienceNonlinear Dimensionality ReductionDeep LearningNatural Sciences
To better conform to data geometry, recent deep generative modelling techniques adapt Euclidean constructions to non-Euclidean spaces. In this paper, we study normalizing flows on manifolds. Previous work has developed flow models for specific cases; however, these advancements hand craft layers on a manifold-by-manifold basis, restricting generality and inducing cumbersome design constraints. We overcome these issues by introducing Neural Manifold Ordinary Differential Equations, a manifold generalization of Neural ODEs, which enables the construction of Manifold Continuous Normalizing Flows (MCNFs). MCNFs require only local geometry (therefore generalizing to arbitrary manifolds) and compute probabilities with continuous change of variables (allowing for a simple and expressive flow construction). We find that leveraging continuous manifold dynamics produces a marked improvement for both density estimation and downstream tasks.
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