This paper is concerned with the identifiability of models depending on a multidimensional parameter vector, aimed at fitting a probability distribution to discrete observed data, with a special focus on a recently proposed mixture model. Starting from the necessary and sufficient condition derived by the definition of identifiability, we describe a general method to verify whether a specific model is identifiable or not. This procedure is then applied to investigate the identifiability of a recently proposed mixture model for rating data, Nonlinear CUB, which is an extension of a class of mixture models called CUB (Combination of Uniform and Binomial). Formal proofs and a numerical study show that some sufficient conditions for identifiab...
In this paper, we address the problem of testing hypotheses using maximum likelihood statistics in ...
We discuss the question of model identifiability within the context of nonlinear mixed effects model...
Mixtures of ranking models are standard tools for ranking problems. However, even the fundamental qu...
In this article we discuss the identifiability of a probability model which has been proven useful f...
Identifiability is a necessary condition for the existence of consistent estimates for the parameter...
In this paper we study the indentifiability of a class of mixture models where a finite number of o...
In this paper, we show under which conditions generalized finite mixture with underlying normal distr...
International audienceWhile hidden class models of various types arise in many statistical applicati...
This article analyzes the identifiability of k-variate, M-component finite mixture models in which e...
Abstract. The concept of the identifiability of mixtures of distributions is discussed and a suffici...
We consider representations of a joint distribution law of a family of categorical random ...
After introducing, at the level of model specication, three basic distinctions {the rst one between ...
The class of finite mixtures of multivariate Bernoulli distributions is known to be nonidentifiable,...
The aim is to study the asymptotic behavior of estimators and tests for the components of identifiab...
International audienceWe prove identifiability of parameters for a broad class of random graph mixtu...
In this paper, we address the problem of testing hypotheses using maximum likelihood statistics in ...
We discuss the question of model identifiability within the context of nonlinear mixed effects model...
Mixtures of ranking models are standard tools for ranking problems. However, even the fundamental qu...
In this article we discuss the identifiability of a probability model which has been proven useful f...
Identifiability is a necessary condition for the existence of consistent estimates for the parameter...
In this paper we study the indentifiability of a class of mixture models where a finite number of o...
In this paper, we show under which conditions generalized finite mixture with underlying normal distr...
International audienceWhile hidden class models of various types arise in many statistical applicati...
This article analyzes the identifiability of k-variate, M-component finite mixture models in which e...
Abstract. The concept of the identifiability of mixtures of distributions is discussed and a suffici...
We consider representations of a joint distribution law of a family of categorical random ...
After introducing, at the level of model specication, three basic distinctions {the rst one between ...
The class of finite mixtures of multivariate Bernoulli distributions is known to be nonidentifiable,...
The aim is to study the asymptotic behavior of estimators and tests for the components of identifiab...
International audienceWe prove identifiability of parameters for a broad class of random graph mixtu...
In this paper, we address the problem of testing hypotheses using maximum likelihood statistics in ...
We discuss the question of model identifiability within the context of nonlinear mixed effects model...
Mixtures of ranking models are standard tools for ranking problems. However, even the fundamental qu...