Likelihood-free Model Choice for Simulator-based Models with the Jensen–Shannon Divergence

06/08/2022
by   Jukka Corander, et al.
0

Choice of appropriate structure and parametric dimension of a model in the light of data has a rich history in statistical research, where the first seminal approaches were developed in 1970s, such as the Akaike's and Schwarz's model scoring criteria that were inspired by information theory and embodied the rationale called Occam's razor. After those pioneering works, model choice was quickly established as its own field of research, gaining considerable attention in both computer science and statistics. However, to date, there have been limited attempts to derive scoring criteria for simulator-based models lacking a likelihood expression. Bayes factors have been considered for such models, but arguments have been put both for and against use of them and around issues related to their consistency. Here we use the asymptotic properties of Jensen–Shannon divergence (JSD) to derive a consistent model scoring criterion for the likelihood-free setting called JSD-Razor. Relationships of JSD-Razor with established scoring criteria for the likelihood-based approach are analyzed and we demonstrate the favorable properties of our criterion using both synthetic and real modeling examples.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
05/22/2022

Nonparametric likelihood-free inference with Jensen-Shannon divergence for simulator-based models with categorical output

Likelihood-free inference for simulator-based statistical models has rec...
research
07/13/2021

Gaussian process interpolation: the choice of the family of models is more important than that of the selection criterion

This article revisits the fundamental problem of parameter selection for...
research
09/13/2021

Parametric Modeling Approach to COVID-19 Pandemic Data

The problem of skewness is common among clinical trials and survival dat...
research
08/31/2022

Improved information criteria for Bayesian model averaging in lattice field theory

Bayesian model averaging is a practical method for dealing with uncertai...
research
04/08/2021

Generalized Bayesian Likelihood-Free Inference Using Scoring Rules Estimators

We propose a framework for Bayesian Likelihood-Free Inference (LFI) base...
research
06/27/2012

Feature Selection via Probabilistic Outputs

This paper investigates two feature-scoring criteria that make use of es...

Please sign up or login with your details

Forgot password? Click here to reset