depmixS4 implements a general framework for defining and estimating dependent mixture models in the R programming language. This includes standard Markov models, latent/hidden Markov models, and latent class and finite mixture distribution models. The models can be fitted on mixed multivariate data with distributions from the glm family, the (logistic) multinomial, or the multivariate normal distribution. Other distributions can be added easily, and an example is provided with the exgaus distribution. Parameters are estimated by the expectation-maximization (EM) algorithm or, when (linear) constraints are imposed on the parameters, by direct numerical optimization with the Rsolnp or Rdonlp2 routines
The lme4 package provides R functions to fit and analyze several different types of mixed-effects mo...
We discuss an interpretation of the mixture transition distribution (MTD) for discrete-valued time s...
Finite mixtures of von Mises-Fisher distributions allow to apply model-based clustering methods to d...
This introduction to the R package depmixS4 is a (slightly) modified version of Visser and Speekenbr...
Sequence analysis is being more and more widely used for the analysis of social sequences and other ...
Sequence analysis is being more and more widely used for the analysis of social sequences and other ...
The mixtools package for R provides a set of functions for analyzing a variety of finite mixture mod...
International audienceDue to its interpretabilities, the model-based clustering approach for fitting...
International audienceMixmod is a well-established software package for fitting a mixture model of m...
Description Fit multivariate mixture models via the EM Algorithm. Multivariate distributions in-clud...
This paper describes an algorithm for fitting finite mixtures of unrestricted Multivariate Skew t (F...
Summary: Hidden Markov models (HMMs) are flexible and widely used in scientific studies. Particularl...
We discuss an interpretation of the Mixture Transition Distribution (MTD) for discrete-valued time s...
BNPmix is an R package for Bayesian nonparametric multivariate density estimation, clustering, and r...
Mixmod is a well-established software package for fitting a mixture model of multi-variate Gaussian ...
The lme4 package provides R functions to fit and analyze several different types of mixed-effects mo...
We discuss an interpretation of the mixture transition distribution (MTD) for discrete-valued time s...
Finite mixtures of von Mises-Fisher distributions allow to apply model-based clustering methods to d...
This introduction to the R package depmixS4 is a (slightly) modified version of Visser and Speekenbr...
Sequence analysis is being more and more widely used for the analysis of social sequences and other ...
Sequence analysis is being more and more widely used for the analysis of social sequences and other ...
The mixtools package for R provides a set of functions for analyzing a variety of finite mixture mod...
International audienceDue to its interpretabilities, the model-based clustering approach for fitting...
International audienceMixmod is a well-established software package for fitting a mixture model of m...
Description Fit multivariate mixture models via the EM Algorithm. Multivariate distributions in-clud...
This paper describes an algorithm for fitting finite mixtures of unrestricted Multivariate Skew t (F...
Summary: Hidden Markov models (HMMs) are flexible and widely used in scientific studies. Particularl...
We discuss an interpretation of the Mixture Transition Distribution (MTD) for discrete-valued time s...
BNPmix is an R package for Bayesian nonparametric multivariate density estimation, clustering, and r...
Mixmod is a well-established software package for fitting a mixture model of multi-variate Gaussian ...
The lme4 package provides R functions to fit and analyze several different types of mixed-effects mo...
We discuss an interpretation of the mixture transition distribution (MTD) for discrete-valued time s...
Finite mixtures of von Mises-Fisher distributions allow to apply model-based clustering methods to d...