Network


Latest external collaboration on country level. Dive into details by clicking on the dots.

Hotspot


Dive into the research topics where Taoufik Bouezmarni is active.

Publication


Featured researches published by Taoufik Bouezmarni.


Econometric Theory | 2005

Consistency of asymmetric kernel density estimators and smoothed histograms with application to income data

Taoufik Bouezmarni; Olivier Scaillet

We consider asymmetric kernel density estimators and smoothed histograms when the unknown probability density function f is defined on [0,+infinity). Uniform weak consistency on each compact set in [0,+infinity) is proved for these estimators when f is continuous on its support. Weak convergence in L_1 is also established. We further prove that the asymmetric kernel density estimator and the smoothed histogram converge in probability to infinity at x=0 when the density is unbounded at x=0. Monte Carlo results and an empirical study of the shape of a highly skewed income distribution based on a large micro-data set are finally provided.


Journal of Statistical Planning and Inference | 2010

Nonparametric density estimation for multivariate bounded data

Taoufik Bouezmarni; Jeroen V.K. Rombouts

We propose a new nonparametric estimator for the density function of multivariate bounded data. As frequently observed in practice, the variables may be partially bounded (e.g., nonnegative) or completely bounded (e.g., in the unit interval). In addition, the variables may have a point mass. We reduce the conditions on the underlying density to a minimum by proposing a nonparametric approach. By using a gamma, a beta, or a local linear kernel (also called boundary kernels), in a product kernel, the suggested estimator becomes simple in implementation and robust to the well known boundary bias problem. We investigate the mean integrated squared error properties, including the rate of convergence, uniform strong consistency and asymptotic normality. We establish consistency of the least squares cross-validation method to select optimal bandwidth parameters. A detailed simulation study investigates the performance of the estimators. Applications using lottery and corporate finance data are provided.


Canadian Journal of Statistics-revue Canadienne De Statistique | 2003

Consistency of the beta kernel density function estimator

Taoufik Bouezmarni; Jean-Marie Rolin

The authors give the exact asymptotic behaviour of the expected average absolute error of a beta kernel density estimator proposed by Chen (1999). They also prove the uniform weak consistency of this estimator for the class of continuous densities.


Journal of the American Statistical Association | 2013

Copula-Based Regression Estimation and Inference

Hohsuk Noh; Anouar El Ghouch; Taoufik Bouezmarni

We investigate a new approach to estimating a regression function based on copulas. The main idea behind this approach is to write the regression function in terms of a copula and marginal distributions. Once the copula and the marginal distributions are estimated, we use the plug-in method to construct our new estimator. Because various methods are available in the literature for estimating both a copula and a distribution, this idea provides a rich and flexible family of regression estimators. We provide some asymptotic results related to this copula-based regression modeling when the copula is estimated via profile likelihood and the marginals are estimated nonparametrically. We also study the finite sample performance of the estimator and illustrate its usefulness by analyzing data from air pollution studies.


Journal of Multivariate Analysis | 2010

Asymptotic properties of the Bernstein density copula estimator for α-mixing data

Taoufik Bouezmarni; Jeroen V.K. Rombouts; Abderrahim Taamouti

Copulas are extensively used for dependence modeling. In many cases the data does not reveal how the dependence can be modeled using a particular parametric copula. Nonparametric copulas do not share this problem since they are entirely data based. This paper proposes nonparametric estimation of the density copula for @a-mixing data using Bernstein polynomials. We focus only on the dependence structure between stochastic processes, captured by the copula density defined on the unit cube, and not the complete distribution. We study the asymptotic properties of the Bernstein density copula, i.e., we provide the exact asymptotic bias and variance, we establish the uniform strong consistency and the asymptotic normality. An empirical application is considered to illustrate the dependence structure among international stock markets (US and Canada) using the Bernstein density copula estimator.


Computational Statistics & Data Analysis | 2010

Nonparametric density estimation for positive time series

Taoufik Bouezmarni; Jeroen V.K. Rombouts

The Gaussian kernel density estimator is known to have substantial problems for bounded random variables with high density at the boundaries. For independent and identically distributed data, several solutions have been put forward to solve this boundary problem. In this paper, we propose the gamma kernel estimator as a density estimator for positive time series data from a stationary @a-mixing process. We derive the mean (integrated) squared error and asymptotic normality. In a Monte Carlo simulation, we generate data from an autoregressive conditional duration model and a stochastic volatility model. We study the local and global behavior of the estimator and we find that the gamma kernel estimator outperforms the local linear density estimator and the Gaussian kernel estimator based on log-transformed data. We also illustrate the good performance of the h-block cross-validation method as a bandwidth selection procedure. An application to data from financial transaction durations and realized volatility is provided.


Journal of Nonparametric Statistics | 2014

Nonparametric tests for conditional independence using conditional distributions

Taoufik Bouezmarni; Abderrahim Taamouti

The concept of causality is naturally defined in terms of conditional distribution, however almost all the empirical works focus on causality in mean. This paper aims to propose a nonparametric statistic to test the conditional independence and Granger non-causality between two variables conditionally on another one. The test statistic is based on the comparison of conditional distribution functions using an L2 metric. We use Nadaraya–Watson method to estimate the conditional distribution functions. We establish the asymptotic size and power properties of the test statistic and we motivate the validity of the local bootstrap. We ran a simulation experiment to investigate the finite sample properties of the test and we illustrate its practical relevance by examining the Granger non-causality between S&P 500 Index returns and VIX volatility index. Contrary to the conventional t-test which is based on a linear mean-regression, we find that VIX index predicts excess returns both at short and long horizons.


Journal of Nonparametric Statistics | 2007

Bernstein estimator for unbounded density function

Taoufik Bouezmarni; J. M. Rolin

Nonparametric estimation for an unknown probability density function f with a known compact support [0, 1] not necessarily bounded at x=0 is considered. For such class of density functions, we consider the Bernstein estimator. The uniform weak consistency and the uniform strong consistency on each compact I in (0, 1) are established for the Bernstein estimator. We prove also the almost sure convergence to infinity at x=0 of the Bernstein estimator when the density function f is unbounded at x=0. To select the optimal bandwidth parameter of the Bernstein estimator, the least squares cross-validation and the likelihood cross-validation methods are developed.


Computational Statistics & Data Analysis | 2009

Semiparametric multivariate density estimation for positive data using copulas

Taoufik Bouezmarni; Jeroen V.K. Rombouts

The estimation of density functions for positive multivariate data is discussed. The proposed approach is semiparametric. The estimator combines gamma kernels or local linear kernels, also called boundary kernels, for the estimation of the marginal densities with parametric copulas to model the dependence. This semiparametric approach is robust both to the well-known boundary bias problem and the curse of dimensionality problem. Mean integrated squared error properties, including the rate of convergence, the uniform strong consistency and the asymptotic normality are derived. A simulation study investigates the finite sample performance of the estimator. The proposed estimator performs very well, also for data without boundary bias problems. For bandwidths choice in practice, the univariate least squares cross validation method for the bandwidth of the marginal density estimators is investigated. Applications in the field of finance are provided.


Journal of Nonparametric Statistics | 2008

Density and Hazard Rate Estimation for Censored and A-Mixing Data Using Gamma Kernels

Taoufik Bouezmarni; Jeroen V.K. Rombouts

In this paper we consider the nonparametric estimation for a density and hazard rate function for right censored -mixing survival time data using kernel smoothing techniques. Since survival times are positive with potentially a high concentration at zero, one has to take into account the bias problems when the functions are estimated in the boundary region. In this paper, gamma kernel estimators of the density and the hazard rate function are proposed. The estimators use adaptive weights depending on the point in which we estimate the function, and they are robust to the boundary bias problem. For both estimators, the mean squared error properties, including the rate of convergence, the almost sure consistency and the asymptotic normality are investigated. The results of a simulation demonstrate the excellent performance of the proposed estimators.

Collaboration


Dive into the Taoufik Bouezmarni's collaboration.

Top Co-Authors

Avatar
Top Co-Authors

Avatar

Anouar El Ghouch

Université catholique de Louvain

View shared research outputs
Top Co-Authors

Avatar

Mhamed Mesfioui

Université du Québec à Trois-Rivières

View shared research outputs
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Top Co-Authors

Avatar

Hohsuk Noh

Université catholique de Louvain

View shared research outputs
Top Co-Authors

Avatar

Jean-Marie Rolin

Université catholique de Louvain

View shared research outputs
Top Co-Authors

Avatar

Abderrahim Taamouti

Charles III University of Madrid

View shared research outputs
Top Co-Authors

Avatar
Top Co-Authors

Avatar

F. C. Lemyre

Université de Sherbrooke

View shared research outputs
Researchain Logo
Decentralizing Knowledge