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pomp (version 0.43-4)

Statistical inference for partially observed Markov processes

Description

Inference methods for partially-observed Markov processes

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Version

Install

install.packages('pomp')

Monthly Downloads

2,109

Version

0.43-4

License

GPL (>= 2)

Maintainer

Aaron King

Last Published

August 21st, 2012

Functions in pomp (0.43-4)

nlf

Fit Model to Data Using Nonlinear Forecasting (NLF)
dacca

Model of cholera transmission for historic Bengal.
sir

SIR models.
B-splines

B-spline bases
pmcmc-methods

Methods of the "pmcmc" class
probed.pomp-methods

Methods of the "probed.pomp", "probe.matched.pomp", "spect.pomp", and "spect.matched.pomp" classes
eulermultinom

Euler-multinomial death process
pomp

Partially-observed Markov process object.
sannbox

Simulated annealing with box constraints.
pfilter

Particle filter
pompBuilder

Write, compile, link, and build a pomp object using native codes
sobol

Sobol' low-discrepancy sequence
pfilter-methods

Methods of the "pfilterd.pomp" class
rprocess-pomp

Simulate the process model of a partially-observed Markov process
bsmc

Liu and West Bayesian Particle Filter
spect

Power spectrum computation for partially-observed Markov processes.
simulate-pomp

Running simulations of a partially-observed Markov process
rw2

Two-dimensional random-walk process
particles-mif

Generate particles from the user-specified distribution.
dmeasure-pomp

Evaluate the probability density of observations given underlying states in a partially-observed Markov process
blowflies

Model for Nicholson's blowflies.
pomp-package

Partially-observed Markov processes
pomp-fun

Definition and methods of the "pomp.fun" class
mif

The MIF algorithm
pmcmc

The PMCMC algorithm
init.state-pomp

Return a matrix of initial conditions given a vector of parameters and an initial time.
ricker

Ricker model with Poisson observations.
mif-methods

Methods of the "mif" class
gompertz

Gompertz model with log-normal observations.
basic.probes

Some probes for partially-observed Markov processes
mif-class

The "mif" class
dprocess-pomp

Evaluate the probability density of state transitions in a Markov process
skeleton-pomp

Evaluate the deterministic skeleton at the given points in state space.
parmat

Create a matrix of parameters
sliceDesign

Design matrices for likelihood slices.
probe

Probe a partially-observed Markov process.
pomp-methods

Methods of the "pomp" class
rmeasure-pomp

Simulate the measurement model of a partially-observed Markov process
verhulst

Simple Verhulst-Pearl (logistic) model.
pomp-class

Partially-observed Markov process class
plugins

Plug-ins for dynamical models based on stochastic Euler algorithms
trajectory

Compute trajectories of the deterministic skeleton.
profileDesign

Design matrices for likelihood profile calculations.
traj.match

Trajectory matching
LondonYorke

Historical childhood disease incidence data
ou2

Two-dimensional discrete-time Ornstein-Uhlenbeck process