Parallel square-root statistical linear regression for inference in nonlinear state space models

06/29/2022
by   Fatemeh Yaghoobi, et al.
0

In this article, we introduce parallel-in-time methods for state and parameter estimation in general nonlinear non-Gaussian state-space models using the statistical linear regression and the iterated statistical posterior linearization paradigms. We also reformulate the proposed methods in a square-root form, resulting in improved numerical stability while preserving the parallelization capabilities. We then leverage the fixed-point structure of our methods to perform likelihood-based parameter estimation in logarithmic time with respect to the number of observations. Finally, we demonstrate the practical performance of the methodology with numerical experiments run on a graphics processing unit (GPU).

READ FULL TEXT

page 1

page 2

page 3

page 4

research
07/18/2019

Least Angle Regression in Tangent Space and LASSO for Generalized Linear Model

We propose sparse estimation methods for the generalized linear models, ...
research
02/19/2021

Temporal Gaussian Process Regression in Logarithmic Time

The aim of this article is to present a novel parallelization method for...
research
12/02/2021

The Linear Template Fit

A matrix formalism for the determination of the best estimator in certai...
research
02/18/2020

Scaled Fixed Point Algorithm for Computing the Matrix Square Root

This paper addresses the numerical solution of the matrix square root pr...
research
01/31/2021

Parallel Iterated Extended and Sigma-point Kalman Smoothers

The problem of Bayesian filtering and smoothing in nonlinear models with...
research
08/02/2017

Latent Parameter Estimation in Fusion Networks Using Separable Likelihoods

Multi-sensor state space models underpin fusion applications in networks...
research
02/07/2020

Constructing a variational family for nonlinear state-space models

We consider the problem of maximum likelihood parameter estimation for n...

Please sign up or login with your details

Forgot password? Click here to reset