Accelerating Approximate Bayesian Computation with Quantile Regression: Application to Cosmological Redshift Distributions

07/24/2017
by   Tomasz Kacprzak, et al.
0

Approximate Bayesian Computation (ABC) is a method to obtain a posterior distribution without a likelihood function, using simulations and a set of distance metrics. For that reason, it has recently been gaining popularity as an analysis tool in cosmology and astrophysics. Its drawback, however, is a slow convergence rate. We propose a novel method, which we call qABC, to accelerate ABC with Quantile Regression. In this method, we create a model of quantiles of distance measure as a function of input parameters. This model is trained on a small number of simulations and estimates which regions of the prior space are likely to be accepted into the posterior. Other regions are then immediately rejected. This procedure is then repeated as more simulations are available. We apply it to the practical problem of estimation of redshift distribution of cosmological samples, using forward modelling developed in previous work. The qABC method converges to nearly same posterior as the basic ABC. It uses, however, only 20% of the number of simulations compared to basic ABC, achieving a fivefold gain in execution time for our problem. For other problems the acceleration rate may vary; it depends on how close the prior is to the final posterior. We discuss possible improvements and extensions to this method.

READ FULL TEXT

page 5

page 11

research
06/01/2022

Asymptotic Properties for Bayesian Neural Network in Besov Space

Neural networks have shown great predictive power when dealing with vari...
research
02/02/2018

Bayes Calculations from Quantile Implied Likelihood

A Bayesian model can have a likelihood function that is analytically or ...
research
01/13/2014

GPS-ABC: Gaussian Process Surrogate Approximate Bayesian Computation

Scientists often express their understanding of the world through a comp...
research
11/15/2021

Inverting brain grey matter models with likelihood-free inference: a tool for trustable cytoarchitecture measurements

Effective characterisation of the brain grey matter cytoarchitecture wit...
research
05/12/2021

A new framework for experimental design using Bayesian Evidential Learning: the case of wellhead protection area

In this contribution, we predict the wellhead protection area (WHPA, tar...
research
08/26/2022

Generalized Bayes inference on a linear personalized minimum clinically important difference

Inference on the minimum clinically important difference, or MCID, is an...

Please sign up or login with your details

Forgot password? Click here to reset