We propose the Binary Geometric Process (BGP) model for longitudinal binary data with trends. The Geometric Process (GP) model contains two components to capture the dynamics on a trend: the mean of an underlying renewal process and the ratio which measures the direction and strength of the trend. The GP model is extended to binary data using a latent GP. The statistical inference for the BGP models is conducted using the least-square, maximum likelihood (ML) and Bayesian methods. The model is demonstrated through simulation studies and real data analyzes. Results reveal that all estimators perform satisfactorily and that the ML estimator performs the best. Moreover the BGP model is better than the ordinary logistic regression model. © 2010...
The geometric process (GP) is a simple and direct approach to modeling of the successive inter-arriv...
Discrete longitudinal data are common in various disciplines and are often used to assess the change...
AbstractAcyclic probabilistic finite automata (APFA) constitute a rich family of models for discrete...
Since its introduction, the geometric process (GP) has attracted extensive research attention from a...
The geometric process (GP) is a stochastic process that was an extension of the renewal process. It ...
International audienceLam (2007) introduces a generalization of renewal processes named Geometric pr...
The geometric process is a popular method for the modeling of arrival times with trend. In this stud...
In this paper we introduce a binary autoregressive model. In contrast to the typical autoregression ...
The geometric process has been widely applied in reliability engineering and other areas since its i...
The geometric process has been widely studied in various disciplines and applied in reliability, mai...
We propose an alternative to the method of generalized estimating equations (GEE) for inference abou...
Funder: SPRINT; doi: http://dx.doi.org/10.13039/100004730Introduction. In healthcare, change is usua...
AbstractIn this article we introduce a three-parameter extension of the bivariate exponential-geomet...
International audienceWe propose a Bayesian mixed-effects model to learn typical scenarios of change...
Longitudinal binary data has been analyzed over the last three decades either by using odds ratio or...
The geometric process (GP) is a simple and direct approach to modeling of the successive inter-arriv...
Discrete longitudinal data are common in various disciplines and are often used to assess the change...
AbstractAcyclic probabilistic finite automata (APFA) constitute a rich family of models for discrete...
Since its introduction, the geometric process (GP) has attracted extensive research attention from a...
The geometric process (GP) is a stochastic process that was an extension of the renewal process. It ...
International audienceLam (2007) introduces a generalization of renewal processes named Geometric pr...
The geometric process is a popular method for the modeling of arrival times with trend. In this stud...
In this paper we introduce a binary autoregressive model. In contrast to the typical autoregression ...
The geometric process has been widely applied in reliability engineering and other areas since its i...
The geometric process has been widely studied in various disciplines and applied in reliability, mai...
We propose an alternative to the method of generalized estimating equations (GEE) for inference abou...
Funder: SPRINT; doi: http://dx.doi.org/10.13039/100004730Introduction. In healthcare, change is usua...
AbstractIn this article we introduce a three-parameter extension of the bivariate exponential-geomet...
International audienceWe propose a Bayesian mixed-effects model to learn typical scenarios of change...
Longitudinal binary data has been analyzed over the last three decades either by using odds ratio or...
The geometric process (GP) is a simple and direct approach to modeling of the successive inter-arriv...
Discrete longitudinal data are common in various disciplines and are often used to assess the change...
AbstractAcyclic probabilistic finite automata (APFA) constitute a rich family of models for discrete...