abc {pomp} | R Documentation |
Approximate Bayesian computation
Description
The approximate Bayesian computation (ABC) algorithm for estimating the parameters of a partially-observed Markov process.
Usage
## S4 method for signature 'data.frame'
abc(
data,
Nabc = 1,
proposal,
scale,
epsilon,
probes,
params,
rinit,
rprocess,
rmeasure,
dprior,
...,
verbose = getOption("verbose", FALSE)
)
## S4 method for signature 'pomp'
abc(
data,
Nabc = 1,
proposal,
scale,
epsilon,
probes,
...,
verbose = getOption("verbose", FALSE)
)
## S4 method for signature 'probed_pomp'
abc(data, probes, ..., verbose = getOption("verbose", FALSE))
## S4 method for signature 'abcd_pomp'
abc(
data,
Nabc,
proposal,
scale,
epsilon,
probes,
...,
verbose = getOption("verbose", FALSE)
)
Arguments
data |
either a data frame holding the time series data,
or an object of class ‘pomp’,
i.e., the output of another pomp calculation.
Internally, |
Nabc |
the number of ABC iterations to perform. |
proposal |
optional function that draws from the proposal distribution. Currently, the proposal distribution must be symmetric for proper inference: it is the user's responsibility to ensure that it is. Several functions that construct appropriate proposal function are provided: see MCMC proposals for more information. |
scale |
named numeric vector of scales. |
epsilon |
ABC tolerance. |
probes |
a single probe or a list of one or more probes. A probe is simply a scalar- or vector-valued function of one argument that can be applied to the data array of a ‘pomp’. A vector-valued probe must always return a vector of the same size. A number of useful probes are provided with the package: see basic probes. |
params |
optional; named numeric vector of parameters.
This will be coerced internally to storage mode |
rinit |
simulator of the initial-state distribution.
This can be furnished either as a C snippet, an R function, or the name of a pre-compiled native routine available in a dynamically loaded library.
Setting |
rprocess |
simulator of the latent state process, specified using one of the rprocess plugins.
Setting |
rmeasure |
simulator of the measurement model, specified either as a C snippet, an R function, or the name of a pre-compiled native routine available in a dynamically loaded library.
Setting |
dprior |
optional; prior distribution density evaluator, specified either as a C snippet, an R function, or the name of a pre-compiled native routine available in a dynamically loaded library.
For more information, see prior specification.
Setting |
... |
additional arguments are passed to |
verbose |
logical; if |
Running ABC
abc
returns an object of class ‘abcd_pomp’.
One or more ‘abcd_pomp’ objects can be joined to form an ‘abcList’ object.
Re-running ABC iterations
To re-run a sequence of ABC iterations, one can use the abc
method on a ‘abcd_pomp’ object.
By default, the same parameters used for the original ABC run are re-used (except for verbose
, the default of which is shown above).
If one does specify additional arguments, these will override the defaults.
Continuing ABC iterations
One can continue a series of ABC iterations from where one left off using the continue
method.
A call to abc
to perform Nabc=m
iterations followed by a call to continue
to perform Nabc=n
iterations will produce precisely the same effect as a single call to abc
to perform Nabc=m+n
iterations.
By default, all the algorithmic parameters are the same as used in the original call to abc
.
Additional arguments will override the defaults.
Methods
The following can be applied to the output of an abc
operation:
abc
repeats the calculation, beginning with the last state
continue
continues the
abc
calculationplot
produces a series of diagnostic plots
traces
produces an
mcmc
object, to which the various coda convergence diagnostics can be applied
Note for Windows users
Some Windows users report problems when using C snippets in parallel computations.
These appear to arise when the temporary files created during the C snippet compilation process are not handled properly by the operating system.
To circumvent this problem, use the cdir
and cfile
options to cause the C snippets to be written to a file of your choice, thus avoiding the use of temporary files altogether.
Author(s)
Edward L. Ionides, Aaron A. King
References
J.-M. Marin, P. Pudlo, C. P. Robert, and R. J. Ryder. Approximate Bayesian computational methods. Statistics and Computing 22, 1167–1180, 2012.
T. Toni and M. P. H. Stumpf. Simulation-based model selection for dynamical systems in systems and population biology. Bioinformatics 26, 104–110, 2010.
T. Toni, D. Welch, N. Strelkowa, A. Ipsen, and M. P. H. Stumpf. Approximate Bayesian computation scheme for parameter inference and model selection in dynamical systems. Journal of the Royal Society Interface 6, 187–202, 2009.
See Also
More on methods based on summary statistics:
basic_probes
,
nlf
,
probe()
,
probe_match
,
spect()
,
spect_match
More on pomp estimation algorithms:
bsmc2()
,
estimation_algorithms
,
mif2()
,
nlf
,
pmcmc()
,
pomp-package
,
probe_match
,
spect_match
More on Markov chain Monte Carlo methods:
pmcmc()
,
proposals
More on Bayesian methods:
bsmc2()
,
dprior()
,
pmcmc()
,
prior_spec
,
rprior()