Hessian metric via transport information geometry
March 23, 2020 Β· Declared Dead Β· π Journal of Mathematics and Physics
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Authors
Wuchen Li
arXiv ID
2003.10526
Category
math.DG
Cross-listed
cs.IT,
math-ph
Citations
23
Venue
Journal of Mathematics and Physics
Last Checked
3 months ago
Abstract
We propose to study the Hessian metric of a functional on the space of probability measures endowed with the Wasserstein $2$-metric. We name it transport Hessian metric, which contains and extends the classical Wasserstein-$2$ metric. We formulate several dynamical systems associated with transport Hessian metrics. Several connections between transport Hessian metrics and mathematical physics equations are discovered. E.g., the transport Hessian gradient flow, including Newton's flow, formulates a mean-field kernel Stein variational gradient flow; The transport Hessian Hamiltonian flow of Boltzmann-Shannon entropy forms the Shallow water equation; The transport Hessian gradient flow of Fisher information leads to the heat equation. Several examples and closed-form solutions for transport Hessian distances are presented.
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