A Review on Quantile Regression for Stochastic Computer Experiments

01/23/2019
by   Léonard Torossian, et al.
0

We report on an empirical study of the main strategies for conditional quantile estimation in the context of stochastic computer experiments. To ensure adequate diversity, six metamodels are presented, divided into three categories based on order statistics, functional approaches, and those of Bayesian inspiration. The metamodels are tested on several problems characterized by the size of the training set, the input dimension, the quantile order and the value of the probability density function in the neighborhood of the quantile. The metamodels studied reveal good contrasts in our set of 480 experiments, enabling several patterns to be extracted. Based on our results, guidelines are proposed to allow users to select the best method for a given problem.

READ FULL TEXT
research
03/06/2023

Quantile-Quantile Methodology – Detailed Results

The linear quantile-quantile relationship provides an easy-to-implement ...
research
05/30/2023

Bayesian joint quantile autoregression

Quantile regression continues to increase in usage, providing a useful a...
research
04/02/2020

Sequential online subsampling for thinning experimental designs

We consider a design problem where experimental conditions (design point...
research
11/23/2021

Trimmed Harrell-Davis quantile estimator based on the highest density interval of the given width

Traditional quantile estimators that are based on one or two order stati...
research
02/26/2021

Deep Quantile Aggregation

Conditional quantile estimation is a key statistical learning challenge ...
research
08/14/2020

Bayesian Quantile Matching Estimation

Due to increased awareness of data protection and corresponding laws man...
research
05/21/2023

A Quantile Shift Approach To Main Effects And Interactions In A 2-By-2 Design

When comparing two independent groups, shift functions are basically tec...

Please sign up or login with your details

Forgot password? Click here to reset