Mathematics (Sep 2022)

Data Depth and Multiple Output Regression, the Distorted <i>M</i>-Quantiles Approach

  • Maicol Ochoa,
  • Ignacio Cascos

DOI
https://doi.org/10.3390/math10183272
Journal volume & issue
Vol. 10, no. 18
p. 3272

Abstract

Read online

For a univariate distribution, its M-quantiles are obtained as solutions to asymmetric minimization problems dealing with the distance of a random variable to a fixed point. The asymmetry refers to the different weights awarded to the values of the random variable at either side of the fixed point. We focus on M-quantiles whose associated losses are given in terms of a power. In this setting, the classical quantiles are obtained for the first power, while the expectiles correspond to quadratic losses. The M-quantiles considered here are computed over distorted distributions, which allows to tune the weight awarded to the more central or peripheral parts of the distribution. These distorted M-quantiles are used in the multivariate setting to introduce novel families of central regions and their associated depth functions, which are further extended to the multiple output regression setting in the form of conditional and regression regions and conditional depths.

Keywords