Mia Hubert


Ontology type: schema:Person     


Person Info

NAME

Mia

SURNAME

Hubert

Publications in SciGraph latest 50 shown

  • 2017-09 Multivariate and functional classification using depth and distance in ADVANCES IN DATA ANALYSIS AND CLASSIFICATION
  • 2016-11 Analysis of travel activity determinants using robust statistics in TRANSPORTATION
  • 2015-07 Multivariate functional outlier detection in STATISTICAL METHODS & APPLICATIONS
  • 2015-07 Rejoinder to ‘multivariate functional outlier detection’ in STATISTICAL METHODS & APPLICATIONS
  • 2014-02 Shape bias of robust covariance estimators: an empirical study in STATISTICAL PAPERS
  • 2013-09 Reducing the mean squared error of quantile-based estimators by smoothing in TEST
  • 2013 High-Breakdown Estimators of Multivariate Location and Scatter in ROBUSTNESS AND COMPLEX DATA STRUCTURES
  • 2011 Multivariate Techniques: Robustness in INTERNATIONAL ENCYCLOPEDIA OF STATISTICAL SCIENCE
  • 2010-12 Robust classification for skewed data in ADVANCES IN DATA ANALYSIS AND CLASSIFICATION
  • 2010 DetMCD in a Calibration Framework in PROCEEDINGS OF COMPSTAT'2010
  • 2009 Robustness of Kernel Based Regression: A Comparison of Iterative Weighting Schemes in ARTIFICIAL NEURAL NETWORKS – ICANN 2009
  • 2008-07 Goodness-of-fit tests based on a robust measure of skewness in COMPUTATIONAL STATISTICS
  • 2004 Robust PCR and Robust PLSR: a Comparative Study in THEORY AND APPLICATIONS OF RECENT ROBUST METHODS
  • 2004 A Study of Belgian Inflation, Relative Prices and Nominal Rigidities using New Robust Measures of Skewness and Tail Weight in THEORY AND APPLICATIONS OF RECENT ROBUST METHODS
  • 2004 A Robust Estimator of the Tail Index Based on an Exponential Regression Model in THEORY AND APPLICATIONS OF RECENT ROBUST METHODS
  • 2003 A Comparison of Some New Measures of Skewness in DEVELOPMENTS IN ROBUST STATISTICS
  • 2003 Robust PCA for High-dimensional Data in DEVELOPMENTS IN ROBUST STATISTICS
  • 2002 Robust Principal Components Regression in COMPSTAT
  • 2001 Similarities Between Location Depth and Regression Depth in STATISTICS IN GENETICS AND IN THE ENVIRONMENTAL SCIENCES
  • 2000 An improved algorithm for robust PCA in COMPSTAT
  • 1999-09 Depth in an Arrangement of Hyperplanes in DISCRETE & COMPUTATIONAL GEOMETRY
  • Affiliations

  • KU Leuven (current)
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