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SMM (version 1.0.2)

Simulation and Estimation of Multi-State Discrete-Time Semi-Markov and Markov Models

Description

Performs parametric and non-parametric estimation and simulation for multi-state discrete-time semi-Markov processes. For the parametric estimation, several discrete distributions are considered for the sojourn times: Uniform, Geometric, Poisson, Discrete Weibull and Negative Binomial. The non-parametric estimation concerns the sojourn time distributions, where no assumptions are done on the shape of distributions. Moreover, the estimation can be done on the basis of one or several sample paths, with or without censoring at the beginning or/and at the end of the sample paths. The implemented methods are described in Barbu, V.S., Limnios, N. (2008) , Barbu, V.S., Limnios, N. (2008) and Trevezas, S., Limnios, N. (2011) . Estimation and simulation of discrete-time k-th order Markov chains are also considered.

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Version

Install

install.packages('SMM')

Monthly Downloads

126

Version

1.0.2

License

GPL

Maintainer

Nicolas Vergne

Last Published

January 31st, 2020

Functions in SMM (1.0.2)

AIC_SM

AIC (semi-Markov model)
simulMk

Simulation of a k-th order Markov chain
simulSM

Simulation of a semi-Markov chain
estimSM

Estimation of a semi-Markov chain
InitialLawSM

Estimation of the initial law (semi-Markov model)
SMM-package

SMM : Semi-Markov and Markov Models
BIC_SM

BIC (semi-Markov model)
estimMk

Estimation of a k-th order Markov chain
LoglikelihoodSM

Loglikelihood (semi-Markov model)
LoglikelihoodMk

Loglikelihood (Markov model)
InitialLawMk

Estimation of the initial law (Markov model)
BIC_Mk

BIC (Markov model)
AIC_Mk

AIC (Markov model)