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A robust, adaptive M-estimator for pointwise estimation in
  heteroscedastic regression
v1v2v3v4 (latest)

A robust, adaptive M-estimator for pointwise estimation in heteroscedastic regression

18 July 2012
M. Chichignoud
Johannes Lederer
ArXiv (abs)PDFHTML

Papers citing "A robust, adaptive M-estimator for pointwise estimation in heteroscedastic regression"

9 / 9 papers shown
Risk Bounds for Robust Deep Learning
Risk Bounds for Robust Deep Learning
Johannes Lederer
OOD
186
16
0
14 Sep 2020
Mean estimation and regression under heavy-tailed distributions--a
  survey
Mean estimation and regression under heavy-tailed distributions--a surveyFoundations of Computational Mathematics (FoCM), 2019
Gabor Lugosi
S. Mendelson
358
287
0
10 Jun 2019
Learning from MOM's principles: Le Cam's approach
Learning from MOM's principles: Le Cam's approachStochastic Processes and their Applications (SPA), 2017
Lecué Guillaume
Lerasle Matthieu
260
54
0
08 Jan 2017
Optimal Two-Step Prediction in Regression
Optimal Two-Step Prediction in Regression
Didier Chételat
Johannes Lederer
Joseph Salmon
476
20
0
18 Oct 2014
A Practical Scheme and Fast Algorithm to Tune the Lasso With Optimality
  Guarantees
A Practical Scheme and Fast Algorithm to Tune the Lasso With Optimality Guarantees
M. Chichignoud
Johannes Lederer
Martin J. Wainwright
577
13
0
01 Oct 2014
Adaptation to lowest density regions with application to support
  recovery
Adaptation to lowest density regions with application to support recovery
Tim Patschkowski
Angelika Rohde
519
17
0
18 Aug 2014
Adaptive estimation over anisotropic functional classes via oracle
  approach
Adaptive estimation over anisotropic functional classes via oracle approach
O. Lepski
352
35
0
18 May 2014
Bandwidth selection in kernel empirical risk minimization via the
  gradient
Bandwidth selection in kernel empirical risk minimization via the gradient
M. Chichignoud
S. Loustau
662
1
0
27 Jan 2014
Adaptive Noisy Clustering
Adaptive Noisy ClusteringIEEE Transactions on Information Theory (IEEE Trans. Inf. Theory), 2013
M. Chichignoud
S. Loustau
273
10
0
10 Jun 2013
1
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