We consider the segmentation problem of univariate distributions from the exponential family with multiple parameters. In segmentation, the choice of the number of segments remains a difficult issue due to the discrete nature of the change-points. In this general exponential family distribution framework, we propose a penalized log-likelihood estimator where the penalty is inspired by papers of L. Birg´e and P. Massart. The resulting estimator is proved to satisfy an oracle inequality. We then further study the particular case of categorical variables by comparing the values of the key constants when derived from the specification of our general approach and when obtained by working directly with the characteristics of this distribution. Fi...
Targeted maximum likelihood estimation (TMLE) is a general method for estimating parameters in semip...
This is not a copy of the original, which is in the University of Washington library because the or...
AbstractLet X1,…, Xp be p (≥ 3) independent random variables, where each Xi has a distribution belon...
International audienceWe consider the segmentation problem of univariate distributions from the expo...
Let Mi be an exponential family of densities on [0, 1] pertaining to a vector of orthonormal functio...
Exponential families of distributions are parametric dominated families in which the logarithm of pr...
We observe $n$ independent pairs of random variables $(W_{i}, Y_{i})$ for which the conditional dist...
Data-driven hyperparameter estimation or automatic choice of the smoothing parameter is of great imp...
In this technical report, we consider conditional density estimation with a maximum likelihood appro...
We consider the segmentation problem of Poisson and negative binomial (i.e. overdispersed Poisson) r...
AbstractConsider p independent distributions each belonging to the one parameter exponential family ...
We consider the segmentation problem of Poisson and negative binomial (i.e. overdispersed Poisson) r...
Computationally efficient evaluation of penalized estimators of multivariate exponential family dist...
We consider the segmentation problem of Poisson and negative binomial (i.e. overdispersed ...
Data-driven hyperparameter estimation or automatic choice of the smoothing parameter is of great imp...
Targeted maximum likelihood estimation (TMLE) is a general method for estimating parameters in semip...
This is not a copy of the original, which is in the University of Washington library because the or...
AbstractLet X1,…, Xp be p (≥ 3) independent random variables, where each Xi has a distribution belon...
International audienceWe consider the segmentation problem of univariate distributions from the expo...
Let Mi be an exponential family of densities on [0, 1] pertaining to a vector of orthonormal functio...
Exponential families of distributions are parametric dominated families in which the logarithm of pr...
We observe $n$ independent pairs of random variables $(W_{i}, Y_{i})$ for which the conditional dist...
Data-driven hyperparameter estimation or automatic choice of the smoothing parameter is of great imp...
In this technical report, we consider conditional density estimation with a maximum likelihood appro...
We consider the segmentation problem of Poisson and negative binomial (i.e. overdispersed Poisson) r...
AbstractConsider p independent distributions each belonging to the one parameter exponential family ...
We consider the segmentation problem of Poisson and negative binomial (i.e. overdispersed Poisson) r...
Computationally efficient evaluation of penalized estimators of multivariate exponential family dist...
We consider the segmentation problem of Poisson and negative binomial (i.e. overdispersed ...
Data-driven hyperparameter estimation or automatic choice of the smoothing parameter is of great imp...
Targeted maximum likelihood estimation (TMLE) is a general method for estimating parameters in semip...
This is not a copy of the original, which is in the University of Washington library because the or...
AbstractLet X1,…, Xp be p (≥ 3) independent random variables, where each Xi has a distribution belon...