Constrained Optimal Smoothing and Bayesian Estimation

07/12/2021
by   X Bay, et al.
0

In this paper, we extend the correspondence between Bayesian estimation and optimal smoothing in a Reproducing Kernel Hilbert Space (RKHS) adding a convexe constraints on the solution. Through a sequence of approximating Hilbertian spaces and a discretized model, we prove that the Maximum A Posteriori (MAP) of the posterior distribution is exactly the optimal constrained smoothing function in the RKHS. This paper can be read as a generalization of the paper [7] of Kimeldorf-Wahba where it is proved that the optimal smoothing solution is the mean of the posterior distribution.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
09/29/2019

MMD-Bayes: Robust Bayesian Estimation via Maximum Mean Discrepancy

In some misspecified settings, the posterior distribution in Bayesian st...
research
12/08/2020

Online Particle Smoothing with Application to Map-matching

We introduce a novel method for online smoothing in state-space models b...
research
03/20/2018

V-Splines and Bayes Estimate

Smoothing splines can be thought of as the posterior mean of a Gaussian ...
research
07/07/2016

Kernel Bayesian Inference with Posterior Regularization

We propose a vector-valued regression problem whose solution is equivale...
research
12/23/2022

Hyper-differential sensitivity analysis in the context of Bayesian inference applied to ice-sheet problems

Inverse problems constrained by partial differential equations (PDEs) pl...
research
12/08/2017

Posterior distribution existence and error control in Banach spaces

We generalize the results of Christen2017 on expected Bayes factors (BF)...
research
05/05/2020

Adaptive Conditional Distribution Estimation with Bayesian Decision Tree Ensembles

We present a Bayesian nonparametric model for conditional distribution e...

Please sign up or login with your details

Forgot password? Click here to reset