Approximate confidence distribution computing

06/03/2022
by   Suzanne Thornton, et al.
0

Approximate confidence distribution computing (ACDC) offers a new take on the rapidly developing field of likelihood-free inference from within a frequentist framework. The appeal of this computational method for statistical inference hinges upon the concept of a confidence distribution, a special type of estimator which is defined with respect to the repeated sampling principle. An ACDC method provides frequentist validation for computational inference in problems with unknown or intractable likelihoods. The main theoretical contribution of this work is the identification of a matching condition necessary for frequentist validity of inference from this method. In addition to providing an example of how a modern understanding of confidence distribution theory can be used to connect Bayesian and frequentist inferential paradigms, we present a case to expand the current scope of so-called approximate Bayesian inference to include non-Bayesian inference by targeting a confidence distribution rather than a posterior. The main practical contribution of this work is the development of a data-driven approach to drive ACDC in both Bayesian or frequentist contexts. The ACDC algorithm is data-driven by the selection of a data-dependent proposal function, the structure of which is quite general and adaptable to many settings. We explore two numerical examples that both verify the theoretical arguments in the development of ACDC and suggest instances in which ACDC outperform approximate Bayesian computing methods computationally.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
12/22/2021

Efficient Multifidelity Likelihood-Free Bayesian Inference with Adaptive Computational Resource Allocation

Likelihood-free Bayesian inference algorithms are popular methods for ca...
research
09/04/2021

Confidence Distribution and Distribution Estimation for Modern Statistical Inference

This paper introduces to readers the new concept and methodology of conf...
research
05/25/2016

Communication-Efficient Distributed Statistical Inference

We present a Communication-efficient Surrogate Likelihood (CSL) framewor...
research
04/22/2022

Bayesian operator inference for data-driven reduced-order modeling

This work proposes a Bayesian inference method for the reduced-order mod...
research
12/08/2020

Bridging Bayesian, frequentist and fiducial (BFF) inferences using confidence distribution

Bayesian, frequentist and fiducial (BFF) inferences are much more congru...
research
12/03/2021

Challenges and Opportunities in Approximate Bayesian Deep Learning for Intelligent IoT Systems

Approximate Bayesian deep learning methods hold significant promise for ...
research
11/17/2021

Some Case Studies Using Bayesian Statistical Models

We provide four case studies that use Bayesian machinery to making induc...

Please sign up or login with your details

Forgot password? Click here to reset