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RcppHMM (version 1.2.2)

Rcpp Hidden Markov Model

Description

Collection of functions to evaluate sequences, decode hidden states and estimate parameters from a single or multiple sequences of a discrete time Hidden Markov Model. The observed values can be modeled by a multinomial distribution for categorical/labeled emissions, a mixture of Gaussians for continuous data and also a mixture of Poissons for discrete values. It includes functions for random initialization, simulation, backward or forward sequence evaluation, Viterbi or forward-backward decoding and parameter estimation using an Expectation-Maximization approach.

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Version

Install

install.packages('RcppHMM')

Monthly Downloads

211

Version

1.2.2

License

GPL (>= 2)

Maintainer

Roberto Cardenas-Ovando

Last Published

November 21st, 2017

Functions in RcppHMM (1.2.2)

initHMM

Random Initialization for a Hidden Markov Model with emissions modeled as categorical variables
RcppHMM-package

Overview of Package RcppHMM
evaluation

Observed sequence evaluation given a model
initPHMM

Random Initialization for a Hidden Markov Model with emissions modeled as discrete variables
forwardBackward

Forward-backward algortihm for hidden state decoding
learnEM

Expectation-Maximization algorithm to estimate the model parameters
generateObservations

Generate observations given a model
initGHMM

Random Initialization for a Hidden Markov Model with emissions modeled as continuous variables
loglikelihood

Evaluation of multiple observed sequences given a model
verifyModel

Model parameter verification
setNames

Set the names of the model
viterbi

Viterbi algorithm for hidden state decoding
setParameters

Set the model parameters
Change Log

Changes Made to Package RcppHMM