Polynomial time guarantees for sampling based posterior inference in high-dimensional generalised linear models

08/28/2022
by   Randolf Altmeyer, et al.
0

The problem of computing posterior functionals in general high-dimensional statistical models with possibly non-log-concave likelihood functions is considered. Based on the proof strategy of [56], but using only local likelihood conditions and without relying on M-estimation theory, non-asymptotic statistical and computational guarantees are provided for gradient based MCMC algorithms. Given a suitable initialiser, these guarantees scale polynomially in key algorithmic quantities. The abstract results are applied to several concrete statistical models, including density estimation, nonparametric regression with generalised linear models and a cononical statistical non-linear inverse problem from PDEs.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
09/11/2020

On polynomial-time computation of high-dimensional posterior measures by Langevin-type algorithms

The problem of generating random samples of high-dimensional posterior d...
research
05/17/2021

On log-concave approximations of high-dimensional posterior measures and stability properties in non-linear inverse problems

The problem of efficiently generating random samples from high-dimension...
research
04/08/2021

A New Perspective on Debiasing Linear Regressions

In this paper, we propose an abstract procedure for debiasing constraine...
research
03/02/2017

Active Learning for Accurate Estimation of Linear Models

We explore the sequential decision making problem where the goal is to e...
research
06/29/2016

Alternating Estimation for Structured High-Dimensional Multi-Response Models

We consider learning high-dimensional multi-response linear models with ...
research
06/10/2021

A Variational View on Statistical Multiscale Estimation

We present a unifying view on various statistical estimation techniques ...
research
10/08/2020

Automating Inference of Binary Microlensing Events with Neural Density Estimation

Automated inference of binary microlensing events with traditional sampl...

Please sign up or login with your details

Forgot password? Click here to reset