LorenzRegression {LorenzRegression}R Documentation

LorenzRegression : A package to estimate and interpret Lorenz regressions

Description

The LorenzRegression package proposes a toolbox to estimate, produce inference on and interpret Lorenz regressions. As argued in Heuchenne and Jacquemain (2020), these regressions are used to determine the explanatory power of a set of covariates on the inequality of a response variable. In a nutshell, each variable is given a weight in order to maximize the concentration index of the response with respect to a weighted sum of the covariates. The obtained concentration index is called the explained Gini coefficient. If a single-index model with increasing link function is assumed, the explained Gini boils down to the Gini coefficient of the fitted part of the model. This package rests on two main functions: Lorenz.Reg for the estimation process and Lorenz.boot for more complete inference (tests and confidence intervals).

Details

We direct the user to Heuchenne and Jacquemain (2020) for a rigorous exposition of the methodology and to the vignette Learning Lorenz regressions with examples for a motivational introduction of the LorenzRegression package.

References

Heuchenne, C. and A. Jacquemain (2022). Inference for monotone single-index conditional means: A Lorenz regression approach. Computational Statistics & Data Analysis 167(C).


[Package LorenzRegression version 1.0.0 Index]