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The tenets of quantile-based inference in Bayesian models

Dmytro Perepolkin, Benjamin Goodrich, Ullrika Sahlin

2023Computational Statistics & Data Analysis11 citationsDOIOpen Access PDF

Abstract

Bayesian inference can be extended to probability distributions defined in terms of their inverse distribution function, i.e. their quantile function. This applies to both prior and likelihood. Quantile-based likelihood is useful in models with sampling distributions which lack an explicit probability density function. Quantile-based prior allows for flexible distributions to express expert knowledge. The principle of quantile-based Bayesian inference is demonstrated in the univariate setting with a Govindarajulu likelihood, as well as in a parametric quantile regression, where the error term is described by a quantile function of a Flattened Skew-Logistic distribution.

Topics & Concepts

QuantileQuantile functionMathematicsQuantile regressionBayesian probabilityStatisticsInferenceLikelihood functionBayesian inferenceEconometricsProbability density functionComputer scienceArtificial intelligenceEstimation theoryCumulative distribution functionStatistical Distribution Estimation and ApplicationsStatistical Methods and Bayesian InferenceBayesian Methods and Mixture Models