Publication | Open Access
On the distances between probability density functions
37
Citations
15
References
2014
Year
Measure TheoryDirichlet FormDensity EstimationTotal Variation DistanceEngineeringStochastic ProcessesStochastic CalculusStochastic AnalysisProbability TheoryWiener SpaceStochastic GeometryFunctional AnalysisLevy ProcessMethods FunctionalsProbability Density FunctionsStochastic Differential Equation
We give estimates of the distance between the densities of the laws of two functionals $F$ and $G$ on the Wiener space in terms of the Malliavin-Sobolev norm of $F-G.$ We actually consider a more general framework which allows one to treat with similar (Malliavin type)methods functionals of a Poisson point measure (solutions of jump type stochastic equations). We use the above estimates in order to obtain a criterion which ensures that convergence in distribution implies convergence in total variation distance; in particular, if the functionals at hand are absolutely continuous, this implies convergence in $L^{1}$ of the densities.
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