Dr Gery Geenens

Dr Gery Geenens

Senior Lecturer
Science
School of Mathematics & Statistics

ABOUT ME

Biography

I got my PhD from the Louvain Catholic University (UCL, Belgium) in July 2008. I then moved to Australia to take up a post-doctoral research position at the University of Melbourne under the supervision of Professor Peter Hall. In October 2009, I was offered an academic position at Sydney.

Most of my research lies in developing nonparametric and semiparametric methods in various contexts. In particular, I’m interested in nonparametric regression models (mainly kernel smoothing methods), semiparametric regression models (mainly Single-Index Models), nonparametric copula models for dependence modelling and nonparametric methods for functional data analysis.

Education

  • PhD in Sciences (Statistics), Université catholique de Louvain, Belgium, 2008
  • MSc in Statistics, Université catholique de Louvain, Belgium, 2003
  • MSc in Engineering (Applied Mathematics orientation), Université catholique de Louvain, Belgium, 2002
  • BSc in Engineering, Faculté Polytechnique de Mons, Belgium, 1999

RESEARCH

Research Goals

  • Develop efficient and flexible nonparametric models for a variety of statistical analyses
  • Extend those models to higher dimensional data, in spite of the “Curse of Dimensionality”
  • Provide data-driven automatic rules for smoothing parameter selection in those models

Research in Detail

Most of my research lies in developing nonparametric and semiparametric methods in various contexts. Traditional parametric models assume that the functional form of the statistical objects of interest (distribution of a random variable, regression function, etc.) is exactly known up to a finite number or parameters. This is restrictive and, in case of model misspecification, can lead to erroneous conclusions. In contrast, nonparametric models keep the structural prior assumptions as weak as possible, really `letting the data speak for themselves' (as it is commonly quoted). Usually, this (almost) total flexibility is reached by using statistical models that are infinite-dimensional. This, of course, brings in some new challenges, both in theory and in practice. More specifically, several topics I am currently interested in are the following:

  • Nonparametric copula modelling: A copula describes how the marginal distributions of two random variables `interact' to produce the joint bivariate distribution of the corresponding random vector. Today, copulas are used extensively in statistical modelling in all areas, from quantitative finance and insurance to medicine and climatology. Therefore, empirically estimating a copula function from a bivariate sample has become one of the most important problems of modern statistical modelling.
  • Nonparametric copula-based conditional density estimation: More than a regression model Y = m(X) + e, the conditional density of the dependent variableY given the regressor X provides complete information about the relationship between Y and X. Nonparametrically estimating a conditional density is challenging. However, an elegant and efficient estimator is based on estimating the copula density.
  • Nonparametric high-dimensional density estimation via pair-copula construction: In general, any d-variate joint probability density can be expressed as a product of its d marginals times d(d-1)/2 pair-copula densities, acting on several different conditional probability distributions. This `pair-copula construction' breaks down the high-dimensional density in a product of lower-dimensional objects, that should be easier to estimate. This offers a promising path for nonparametrically estimating any high dimensional probability density, which is a difficult problem.
  • Nonparametric binary regression: consider a regression problem with a binary response. Then, the usual regression function is nothing else but the conditional probability of the response taking the value 1 given the value of the predictors. In that situation, the panacea seems to be logistic regression, although this model is built on strong parametric constraints whose validity is rarely checked. I work on developing very flexible nonparametric estimators for this conditional probability function, as well as using those flexible estimators in further procedures where binary (or more generally discrete and/or qualitative) variables are involved.
  • Nonparametric functional regression: imagine that the random object that you have to work with is actually a whole function. Then we talk about functional data. Until recently, only parametric models had been proposed in that situation, precisely because of the above mentionned dimensionality problems: if a whole random function has to be considered as such, we have to work in an infinite-dimensional space and we are thus facing a severe version of the Curse of Dimensionality. However, recent results have shown that nonparametric models for functional data are no longer that unrealistic. I work on that topic, both theoretically and practically. For instance, a powerful system of signature digital recognition is under consideration, based on the idea that a signature can be regarded as a random function. Estimating the probability of a forgery by analyzing at once a whole signature-function is of obvious interest and I claim that this problem can be tackled via nonparametric functional regression.
  • Related applied studies: So far, most of the applied studies lies within a parametric framework, so that any use of nonparametric methods in applications might be innovative. For instance, I have recently developed a nonparametric model aiming at analysing football (soccer) results, which shows interesting and up to now ignored patterns.

Research Grants

  • 2014 – 2016: Faculty Research Grant, Faculty of Science,
  • 2010 – 2013: Early Career Research Grants, Faculty of Science,

Current Student Projects (PhD and Honours)

Carlos Aya Moreno, “New wavelet-based density estimation in higher dimensions, with application to image registration”, PhD, 2013 - (in co-supervision with A/Prof Spiro Penev)

Supervision Opportunities/Areas

Students willing to know more about any of the above listed research topics are welcome to contact me. I can suggest Honours/PhD projects.

TEACHING & OUTREACH

Courses I teach

: Statistics (2nd year engineering)

: (Higher) Probability and Stochastics Processes

: Nonparametric Statistics

Professional affiliations and service positions

Director of Postgraduate Studies (Coursework),School of Mathematics and Statistics,

Associate Editor of “Statistics and Probability Letters”

Member of the Belgian Statistical Society (SBS-BVS)

Phone
9385 7032
Location
School of Mathematics and Statistics The Red Centre Room 2053 Australia
  • Book Chapters | 2024
    Aya-Moreno C; Penev S; Geenens G, 2024, 'Hellinger-Bhattacharyya Cross-Validation for Shape-Preserving Multivariate Wavelet Thresholding', in Doosti H (ed.), Flexible Nonparametric Curve Estimation, Springer Nature, Cham, Switzerland, pp. 197 - 227,
    Book Chapters | 2011
    Geenens G, 2011, 'A Nonparametric Functional Method for Signature Recognition', in Ferraty F (ed.), Recent Advances in Functional Data Analysis and Related Topics, Springer
  • Journal articles | 2024
    Geenens G, 2024, '(Re-)Reading Sklar (1959)—A Personal View on Sklar’s Theorem', Mathematics, 12,
    Journal articles | 2023
    Geenens G; Nieto-Reyes A; Francisci G, 2023, 'Statistical depth in abstract metric spaces', Statistics and Computing, 33,
    Journal articles | 2022
    Geenens G; Lafaye de Micheaux P, 2022, 'The Hellinger Correlation', Journal of the American Statistical Association, 117, pp. 639 - 653,
    Journal articles | 2020
    Geenens G, 2020, 'Copula modeling for discrete random vectors', Dependence Modeling, 8, pp. 417 - 440,
    Journal articles | 2018
    Aya Moreno C; Geenens G; Penev SI, 2018, 'Shape-preserving wavelet-based multivariate density estimation', Journal of Multivariate Analysis, 168, pp. 30 - 47,
    Journal articles | 2018
    Geenens G; Cuddihy T, 2018, 'Non-parametric evidence of second-leg home advantage in European football', Journal of the Royal Statistical Society. Series A: Statistics in Society, 181, pp. 1009 - 1031,
    Journal articles | 2018
    Geenens G; Wang C, 2018, 'Local-likelihood transformation kernel density estimation for positive random variables', Journal of Computational and Graphical Statistics, 27,
    Journal articles | 2018
    Pathiraja S; Moradkhani H; Marshall L; Sharma A; Geenens G, 2018, 'Data-Driven Model Uncertainty Estimation in Hydrologic Data Assimilation', Water Resources Research, 54, pp. 1252 - 1280,
    Journal articles | 2017
    Geenens G; Dunn R, 2017, 'A nonparametric copula approach to conditional Value-at-Risk', ,
    Journal articles | 2015
    Geenens G; Charpentier A; Paindaveine D, 2015, 'Probit transformation for nonparametric kernel estimation of the copula density', Bernoulli : official journal of the Bernoulli Society for Mathematical Statistics and Probability
    Journal articles | 2015
    Geenens G, 2015, 'Moments, errors, asymptotic normality and large deviation principle in nonparametric functional regression', Statistics and Probability Letters, 107, pp. 369 - 377,
    Journal articles | 2014
    Geenens G, 2014, 'Explicit Formula for Asymptotic Higher Moments of the Nadaraya-Watson Estimator', SANKHYA-SERIES A-MATHEMATICAL STATISTICS AND PROBABILITY, 76, pp. 77 - 100,
    Journal articles | 2014
    Geenens G, 2014, 'Explicit formula for asymptotic higher moments of the Nadaraya-Watson estimator', Sankhya, the Indian Journal of Statistics - Series A, 76, pp. 77 - 100,
    Journal articles | 2014
    Geenens G, 2014, 'On the decisiveness of a game in a tournament', European Journal of Operational Research, 232, pp. 156 - 168,
    Journal articles | 2013
    Geenens G, 2013, 'Probit transformation for kernel density estimation on the unit interval', Journal of the American Statistical Association, 109, pp. 346 - 358,
    Journal articles | 2013
    Hui FKC; Geenens G, 2013, 'A nonparametric measure of local association for two-way contingency tables', Computational Statistics and Data Analysis, 68, pp. 98 - 110,
    Journal articles | 2012
    Hui FKC; Geenens G, 2012, 'Nonparametric bootstrap tests of conditional independence in two-way contingency tables', Journal of Multivariate Analysis, 112, pp. 130 - 144,
    Journal articles | 2011
    Geenens G, 2011, 'Curse of dimensionality and related issues in nonparametric functional regression', Statistics Surveys, 5, pp. 30 - 43,
    Journal articles | 2010
    Geenens G; Simar L, 2010, 'Nonparametric tests for conditional independence in two-way contingency tables', Journal of Multivariate Analysis, 101, pp. 765 - 788,
    Journal articles | 2010
    Geenens G; Simar L, 2010, 'Single-index modelling of conditional probabilities in two-way contingency tables', Statistics, pp. 1 - 28,
    Journal articles | 2010
    Geenens G, 2010, 'Who deserved the 2008-2009 Belgian Football Champion title? A semiparametric Answer', Journal of Quantitative Analysis in Sports, 6, pp. article 4,
    Journal articles | 2006
    Geenens G; Delecroix M, 2006, 'A survey about Single-Index Models theory', International Journal of Statistics and Systems, 1, pp. 203 - 230
  • Working Papers | 2019
    Geenens G, 2019, An essay on copula modelling for discrete random vectors; or how to pour new wine into old bottles, arXiv:1901.08741, ,
    Working Papers | 2018
    Geenens G; Lafaye de Micheaux P, 2018, The Hellinger Correlation, ,
    Working Papers | 2017
    Geenens G, 2017, Mellin-Meijer-kernel density estimation on R+, arXiv:1707.04301, ,
    Working Papers | 2005
    Geenens G; Simar L, 2005, Index coefficients estimation in Single-Index Models: the Generalized Maximum Rank Correlation estimator, DP0535, ,
  • Preprints | 2023
    Geenens G, 2023, Towards a universal representation of statistical dependence, ,
    Preprints | 2022
    Aya-Moreno C; Geenens G; Penev S, 2022, Hellinger-Bhattacharyya cross-validation for shape-preserving multivariate wavelet thresholding,
    Preprints | 2021
    Geenens G; Nieto-Reyes A; Francisci G, 2021, Statistical depth in abstract metric spaces, ,
    Preprints | 2019
    Geenens G, 2019, An essay on copula modelling for discrete random vectors; or how to pour new wine into old bottles, ,
    Preprints | 2018
    Geenens G; de Micheaux PL, 2018, The Hellinger Correlation, ,
    Preprints | 2017
    Geenens G; Cuddihy T, 2017, Robust analysis of second-leg home advantage in UEFA football through better nonparametric confidence intervals for binary regression functions, ,
    Preprints | 2017
    Geenens G; Dunn R, 2017, A nonparametric copula approach to conditional Value-at-Risk, ,
    Preprints | 2017
    Geenens G, 2017, Mellin-Meijer-kernel density estimation on $\mathbb{R}^+$, ,
    Preprints | 2017
    Moreno CA; Geenens G; Penev S, 2017, Shape-preserving wavelet-based multivariate density estimation, ,
    Preprints | 2016
    Geenens G; Wang C, 2016, Local-likelihood transformation kernel density estimation for positive random variables, ,
    Preprints | 2014
    Geenens G; Charpentier A; Paindaveine D, 2014, Probit transformation for nonparametric kernel estimation of the copula density, ,
    Preprints | 2013
    Geenens G, 2013, Probit transformation for kernel density estimation on the unit interval, ,
    Preprints | 2012
    Hui FKC; Geenens G, 2012, A Nonparametric Measure of Local Association for two-way Contingency Tables, ,
    Conference Papers | 2007
    Geenens G, 2007, 'Nonparametric test for conditional independence in two-way contingency tables', Castro Urdiales, Spain, presented at 15th European Young Statisticians Meeting, Castro Urdiales, Spain, 10 September 2007 - 14 September 2007,
    Preprints |
    Geenens G, On the Decisiveness of a Game in a Tournament, ,