Conformalized Quantile Regression

05/08/2019
by   Yaniv Romano, et al.
0

Conformal prediction is a technique for constructing prediction intervals that attain valid coverage in finite samples, without making distributional assumptions. Despite this appeal, existing conformal methods can be unnecessarily conservative because they form intervals of constant or weakly varying length across the input space. In this paper we propose a new method that is fully adaptive to heteroscedasticity. It combines conformal prediction with classical quantile regression, inheriting the advantages of both. We establish a theoretical guarantee of valid coverage, supplemented by extensive experiments on popular regression datasets. We compare the efficiency of conformalized quantile regression to other conformal methods, showing that our method tends to produce shorter intervals.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
07/06/2022

Improved conformalized quantile regression

Conformalized quantile regression is a procedure that inherits the advan...
research
06/14/2023

Integrating Uncertainty Awareness into Conformalized Quantile Regression

Conformalized Quantile Regression (CQR) is a recently proposed method fo...
research
09/12/2019

A comparison of some conformal quantile regression methods

We compare two recently proposed methods that combine ideas from conform...
research
06/05/2023

Conformal Prediction with Missing Values

Conformal prediction is a theoretically grounded framework for construct...
research
06/01/2021

Improving Conditional Coverage via Orthogonal Quantile Regression

We develop a method to generate prediction intervals that have a user-sp...
research
05/18/2021

Conformal histogram regression

This paper develops a conformal method to compute prediction intervals f...
research
02/03/2022

Valid predictions of group-level random effects

Gaussian linear models with random group-level effects are the standard ...

Please sign up or login with your details

Forgot password? Click here to reset