Motivation
The quadratic Wasserstein distance and distance become asymptotically equivalent when the when the measures are absolutely continuous with respect to Lebesgue measure with density close to the value . This is particularly of interest since the space is a Hilbert space as opposed to being only a metric space. This allows one to extend several well-known results about continuity of various operators in to by asymptotic equivalence. This equivalence is also important numerically, where computing is much easier than computing .
Furthermore, this asymptotic equivalence is relevant for evolution problems with the constraint , such as crowd motion. [1]
Formalization
Definition of
The negative Sobolev norm is defined [1] [2] to be
Lemma
Let be measures that are absolutely continuous with respect to Lebesgue measure on a convex domain , with densities bounded above by the same constant . Then, for all functions :
Proof of the lemma can be found Chapter 5, page 210 of [1].
as a Dual
This material is adapted from [3].
An important property of is its characterization as a dual, which justifies the notation. Let be an open and connected subset. For ,
defines a semi-norm. Then for an absolutely continuous signed measure on with zero total mass,
The space is the dual space of zero-mean functions endowed with the norm norm on the gradient.
Theorem
Let be absolutely continuous measures on a convex domain , with densities bounded from below and from above by the same constants with . Then
The proof of the theorem uses the above lemma and can be found Chapter 5, page 211 of [1].
Localization
The following material is adapted from [3].
This section deals with the problem of localization of the quadratic Wasserstein distance: if are (signed) measures on that are close in the sense of , do they remain close to each other when restricted to subsets of ?
Notation
Here we are working in Euclidean space with the Lebesgue measure .
- Recall that for a subset ,
denotes the distance between a point and the subset .
- For a (signed) measure on and a nonnegative and measurable function, denotes the measure such that .
- The norm
denotes the total variation norm of the signed measure . If is in fact a measure, then .
Now we can ask the original question more precisely. If is non-negative and compactly supported satisfying further technical assumptions to be specified later, we wish to bound by , where is a constant factor ensuring that and have the same mass. The factor of is necessary, otherwise the distance between and is in general not well-defined.
Theorem
Let be measures on having the same total mass, and let be a ball in . Assume that on , the density of with respect to the Lebesgue measure is bounded above and below, that is
Let be a -Lipschitz function for some supported in , and suppose that is bounded above and below by the map
on , that is, there exists constants such that for all ,
Then, denoting
we have
for some absolute constant depending only on . Moreover, taking fits. Furthermore, that is supported in a ball is not necessary, as it can be supported in a cube or a simplex.
The proof can be found in [3].
Connection with the Vlasov-Poisson Equation
Loeper [2] contributed an earlier result on a bound between and for bounded densities in studying the existence of solutions to the Vlasov-Poisson equation. Namely, Loeper proved that that if be probability measures on with densities with respect to the Lebesgue measure. Let , solve
in the integral sense, that is,
Then
Loeper also extended the result to finite measures with the same total mass.
References
- ↑ 1.0 1.1 1.2 1.3 F. Santambrogio, Optimal Transport for Applied Mathematicians, Chapter 5, pages 209-211
- ↑ 2.0 2.1 [1] Loeper, Grégoire. Uniqueness of the solution to the Vlasov–Poisson system with bounded density. Journal de Mathématiques Pures et Appliquées, Volume 86, Issue 1,
2006, Pages 68-79, ISSN 0021-7824.
- ↑ 3.0 3.1 3.2 [2] Peyre, Rémi. Comparison between distance and norm, and localisation of Wasserstein distance.