Ensemble Conditional Variance Estimator for Sufficient Dimension Reduction

02/26/2021
by   Lukas Fertl, et al.
0

Ensemble Conditional Variance Estimation (ECVE) is a novel sufficient dimension reduction (SDR) method in regressions with continuous response and predictors. ECVE applies to general non-additive error regression models. It operates under the assumption that the predictors can be replaced by a lower dimensional projection without loss of information. It is a semiparametric forward regression model based exhaustive sufficient dimension reduction estimation method that is shown to be consistent under mild assumptions. It is shown to outperform central subspace mean average variance estimation (csMAVE), its main competitor, under several simulation settings and in a benchmark data set analysis.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
02/17/2021

Conditional Variance Estimator for Sufficient Dimension Reduction

Conditional Variance Estimation (CVE) is a novel sufficient dimension re...
research
04/20/2021

Fusing Sufficient Dimension Reduction with Neural Networks

We consider the regression problem where the dependence of the response ...
research
08/10/2015

Model-based SIR for dimension reduction

A new dimension reduction method based on Gaussian finite mixtures is pr...
research
06/03/2019

Central Quantile Subspace

Quantile regression (QR) is becoming increasingly popular due to its rel...
research
06/19/2019

Bayesian inverse regression for supervised dimension reduction with small datasets

We consider supervised dimension reduction problems, namely to identify ...
research
10/20/2019

Supporting Multi-point Fan Design with Dimension Reduction

Motivated by the idea of turbomachinery active subspace performance maps...
research
10/05/2018

Sliced Average Variance Estimation for Multivariate Time Series

Supervised dimension reduction for time series is challenging as there m...

Please sign up or login with your details

Forgot password? Click here to reset