This thesis is divided into three parts with an additional introduction. In the first part, we propose a smooth goodness-of-fit test for the Pareto distribution family. This test is based on LeCam's theory of local asymptotic normality (LAN). We establish the behaviour of our test statistic firstly under the null hypothesis that the sample follows a Pareto distribution and secondly under local alternatives using the LAN framework. We also expose some simulation results in order to study the finite sample behaviour of the test statistic. In the next chapter, we are interested in the topic of extreme value theory under random censoring. We propose an estimator of the two parameters of the generalized Pareto distribution based on the Newton-Ra...
JSTOR is a not-for-profit service that helps scholars, researchers, and students discover, use, and ...
The task of estimating the parameters of the Pareto distribution, first of all, of an indicator of t...
The Pareto distribution is a simple model for nonnegative data with a power law probability tail. In...
Cette thèse comporte trois parties distinctes auxquelles s ajoute une introduction. Dans un premier ...
Extreme value theory aims at modeling extreme but rare events from a probabilistic point of view. It...
Extreme value theory is about the distributions of very large or very small values in a time series...
Extreme value theory is about the distributions of very large or very small values in a time series ...
AbstractThe fit of a statistical model can be visually assessed by inspection of a quantile–quantile...
We introduce a new characterization of Pareto distribution and construct integral and supremum type...
Abstract. We investigate two models for the following setup: We consider a stochastic process X ∈ C[...
The high particulate matter (PM10) level is the prominent issue causing various impacts to human hea...
This thesis deals with the estimation of functions from tests in three statistical settings. We begi...
summary:We discuss three estimation methods: the method of moments, probability weighted moments, an...
We firstly present in this thesis the permutation Bootstrap method applied for the block maxima (BM)...
The generalised Pareto distribution (GPD) is often used to model extreme values. New smooth tests of...
JSTOR is a not-for-profit service that helps scholars, researchers, and students discover, use, and ...
The task of estimating the parameters of the Pareto distribution, first of all, of an indicator of t...
The Pareto distribution is a simple model for nonnegative data with a power law probability tail. In...
Cette thèse comporte trois parties distinctes auxquelles s ajoute une introduction. Dans un premier ...
Extreme value theory aims at modeling extreme but rare events from a probabilistic point of view. It...
Extreme value theory is about the distributions of very large or very small values in a time series...
Extreme value theory is about the distributions of very large or very small values in a time series ...
AbstractThe fit of a statistical model can be visually assessed by inspection of a quantile–quantile...
We introduce a new characterization of Pareto distribution and construct integral and supremum type...
Abstract. We investigate two models for the following setup: We consider a stochastic process X ∈ C[...
The high particulate matter (PM10) level is the prominent issue causing various impacts to human hea...
This thesis deals with the estimation of functions from tests in three statistical settings. We begi...
summary:We discuss three estimation methods: the method of moments, probability weighted moments, an...
We firstly present in this thesis the permutation Bootstrap method applied for the block maxima (BM)...
The generalised Pareto distribution (GPD) is often used to model extreme values. New smooth tests of...
JSTOR is a not-for-profit service that helps scholars, researchers, and students discover, use, and ...
The task of estimating the parameters of the Pareto distribution, first of all, of an indicator of t...
The Pareto distribution is a simple model for nonnegative data with a power law probability tail. In...