This book presents new and original research in Statistical Information Theory, based on minimum divergence estimators and test statistics, from a theoretical and applied point of view, for different statistical problems with special emphasis on efficiency and robustness. Divergence statistics, based on maximum likelihood estimators, as well as Wald’s statistics, likelihood ratio statistics and Rao’s score statistics, share several optimum asymptotic properties, but are highly non-robust in cases of model misspecification under the presence of outlying observations. It is well-known that a small deviation from the underlying assumptions on the model can have drastic effect on the performance of these classical tests. Specifically, this book...
AbstractThe fundamentals of information theory and also their applications to testing statistical hy...
International audienceWe consider the maximum entropy problems associated with Rényi $Q$-entropy, su...
International audienceWe consider the maximum entropy problems associated with Rényi $Q$-entropy, su...
Data science, information theory, probability theory, statistical learning and other related discipl...
The idea of using functionals of Information Theory, such as entropies or divergences, in statistica...
AbstractThe paper deals with simple and composite hypotheses in statistical models with i.i.d. obser...
International audienceWe consider fitting uncategorical data to a parametric family of distributions...
International audienceWe consider fitting uncategorical data to a parametric family of distributions...
International audienceWe consider fitting uncategorical data to a parametric family of distributions...
This thesis documents three different contributions in statistical learning theory. They were develo...
Recent work has focused on the problem of nonparametric estimation of information divergence functio...
Entropy and relative entropy measures play a crucial role in mathematical information theory. The re...
This book addresses contemporary statistical inference issues when no or minimal assumptions on the ...
Zhang (2019) presented a general estimation approach based on the Gaussian distribution for general ...
AbstractThe fundamentals of information theory and also their applications to testing statistical hy...
AbstractThe fundamentals of information theory and also their applications to testing statistical hy...
International audienceWe consider the maximum entropy problems associated with Rényi $Q$-entropy, su...
International audienceWe consider the maximum entropy problems associated with Rényi $Q$-entropy, su...
Data science, information theory, probability theory, statistical learning and other related discipl...
The idea of using functionals of Information Theory, such as entropies or divergences, in statistica...
AbstractThe paper deals with simple and composite hypotheses in statistical models with i.i.d. obser...
International audienceWe consider fitting uncategorical data to a parametric family of distributions...
International audienceWe consider fitting uncategorical data to a parametric family of distributions...
International audienceWe consider fitting uncategorical data to a parametric family of distributions...
This thesis documents three different contributions in statistical learning theory. They were develo...
Recent work has focused on the problem of nonparametric estimation of information divergence functio...
Entropy and relative entropy measures play a crucial role in mathematical information theory. The re...
This book addresses contemporary statistical inference issues when no or minimal assumptions on the ...
Zhang (2019) presented a general estimation approach based on the Gaussian distribution for general ...
AbstractThe fundamentals of information theory and also their applications to testing statistical hy...
AbstractThe fundamentals of information theory and also their applications to testing statistical hy...
International audienceWe consider the maximum entropy problems associated with Rényi $Q$-entropy, su...
International audienceWe consider the maximum entropy problems associated with Rényi $Q$-entropy, su...