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pomp (version 6.3)

emeasure: emeasure workhorse

Description

Return the expected value of the observed variables, given values of the latent states and the parameters.

Usage

# S4 method for pomp
emeasure(
  object,
  ...,
  x = states(object),
  times = time(object),
  params = coef(object)
)

Value

emeasure returns a rank-3 array of dimensions nobs x nrep x ntimes, where nobs is the number of observed variables.

Arguments

object

an object of class ‘pomp’, or of a class that extends ‘pomp’. This will typically be the output of pomp, simulate, or one of the pomp inference algorithms.

...

additional arguments are ignored.

x

an array containing states of the unobserved process. The dimensions of x are nvars x nrep x ntimes, where nvars is the number of state variables, nrep is the number of replicates, and ntimes is the length of times. One can also pass x as a named numeric vector, which is equivalent to the nrep=1, ntimes=1 case.

times

a numeric vector (length ntimes) containing times. These must be in non-decreasing order.

params

a npar x nrep matrix of parameters. Each column is treated as an independent parameter set, in correspondence with the corresponding column of x.

See Also

Specification of the measurement-model expectation: emeasure_spec

More on pomp workhorse functions: dinit(), dmeasure(), dprior(), dprocess(), flow(), partrans(), pomp-package, rinit(), rmeasure(), rprior(), rprocess(), skeleton(), vmeasure(), workhorses