info:eu-repo/semantics/publishedVersion
Kernel Embedded Nonlinear Observational Mappings in the Variational Mapping Particle Filter
Fecha
2019Registro en:
Kernel Embedded Nonlinear Observational Mappings in the Variational Mapping Particle Filter; 19th International Conference on Computational Science; Faro; Portugal; 2019; 133-133
978-3-030-22747-0
CONICET Digital
CONICET
Autor
Pulido, Manuel Arturo
van Leeuwen, Peter Jan
Posselt, Derek
Resumen
Recently, some works have suggested methods to combine variational probabilistic inference with Monte Carlo sampling. One promising approach is via local optimal transport. In this approach, a gradient steepest descent method based on local optimal transport principles is formulated to transform deterministically point samples from an intermediate density to a posterior density. The local mappings that transform the intermediate densities are embedded in a reproducing kernel Hilbert space (RKHS).