stage1 {calibrator}R Documentation

Stage 1,2 and 3 optimization on toy dataset

Description

Perform O'Hagan's three stage optimization on the toy dataset. Function stage1() and stage2() find the optimal values for the hyperparameters and stage3() finds the optimal values for the three parameters.

Usage

stage1(D1, y, H1,  maxit,  trace=100, method="Nelder-Mead", directory = ".", do.filewrite=FALSE, do.print=TRUE, phi.fun, lognormally.distributed=FALSE, include.prior=TRUE, phi)
stage2(D1, D2, H1, H2, y, z, maxit, trace=100, method = "Nelder-Mead", directory =
".", do.filewrite=FALSE, do.print=TRUE,  extractor, phi.fun, E.theta,
Edash.theta, isotropic=FALSE, lognormally.distributed = FALSE,
include.prior = TRUE, use.standin = FALSE, rho.eq.1 = TRUE, phi) 
stage3(D1, D2, H1, H2, d, maxit, trace=100, method="Nelder-Mead", directory = ".",
do.filewrite=FALSE, do.print=TRUE, include.prior = TRUE, lognormally.distributed=FALSE, theta.start=NULL, phi) 

Arguments

maxit Maximum number of iterations as passed to optim()
trace Amount of information displayed, as passed to optim()
D1 Matrix whose rows are points at which code output is known
D2 Matrix whose rows are points at which observations were made
H1,H2 Regressor basis functions for D1 and D2
y Code outputs. Toy example is y.toy
z Observations. Toy example is z.toy
d Data vector consisting of the code runs and observations
extractor extractor function for D1
E.theta,Edash.theta Expectation WRT theta, and dashed theta. Toy examples are E.theta.toy() and Edash.theta.toy()
phi.fun Function to create hyperparameters; passed (in stage1() and stage2()) to phi.change(). Toy version is phi.fun.toy()
method Method argument passed to optim(); qv
include.prior Boolean variable with default TRUE meaning to include the prior distribution in the optimization process and FALSE meaning to use an uniformative prior (effectively uniform support). This variable is passed to p.eqn4.supp() for stage1(), p.page4() for stage2(), and p.eqn8.supp() for stage3()
lognormally.distributed Boolean with TRUE meaning to use a lognormal distn. See prob.theta for details
do.filewrite Boolean, with TRUE meaning to save a loadable file stage[123].<date>, containing the interim value of phi and the corresponding optimand to directory at each evalution of the optimizer. If FALSE, don't write the files
directory The directory to write files to; only matters if do.filewrite is TRUE
isotropic In function stage2(), Boolean with default FALSE meaning to carry out a full optimization, and TRUE meaning to restrict the scope to isotroic roughness matrices. See details section below
do.print Boolean, with default TRUE meaning to print interim values of phi at each evaluation
use.standin In stage2(), a Boolean argument, with default FALSE meaning to use the real value for matrix V.temp, and TRUE meaning to use a standing that is the same size but contains fictitious values. The only time to set use.standin to TRUE is when debugging as it runs several orders of magnitude faster
rho.eq.1 Boolean, with default TRUE meaning to hold the value of rho constant at one (1)
theta.start In stage3(), the starting point of the optimization with default NULL meaning to use the maximum likelihood point of the apriori distribution (ie phi$theta.apriori$mean)
phi Hyperparameters. Used as initial values for the hyperparameters in the optimization routines

Details

The three functions documented here carry out the multi-stage optimization detailed in KOH2001 (actually, KOH2001 only defined stage 1 and stage 2, which estimated the hyperparameters. What is here called “stage3()” estimates the true value of theta given the hyperparameters).

stage1() carries out stage 1 of KOH2001 which is used to estimate psi1 using optimization.

In function stage2(), setting argument isotropic to TRUE will force phi$omegastar_x to be a function of a length one scalar. The value of phi$omegastar_x used will depend on pdm.maker.psi2() (an internal function appearing in hpa.fun.toy()). In stage2(), several kludges are made. The initial conditions are provided by argument phi. The relevant part of this is phi$psi2.

Function stage2() estimates psi2 and rho and lambda, using optimization. Note that psi2 includes sigma2squared in addition to omegastar_X (in the toy case, psi2 has three elements: the first two are the diagonal of omegastar_x and the third is sigma2squared but this information is encoded in phi.fun.toy(), which changes from application to application).

Function stage3() attempts to find the maximum likelihood estimate of theta, given hyperparameters and observations, using optimization

Author(s)

Robin K. S. Hankin

References

See Also

toys, phi.fun.toy

Examples

data(toys)
stage1(D1=D1.toy,y=y.toy,H1=H1.toy, maxit=5, phi.fun=phi.fun.toy, phi=phi.toy)

##now try with a slightly bigger dataset:
##Examples below take a few minutes to run:

set.seed(0)
data(toys)
jj <- create.new.toy.datasets(D1.toy , D2.toy)
y.toy <- jj$y.toy
z.toy <- jj$z.toy
d.toy <- jj$d.toy

phi.toy.stage1 <- stage1(D1=D1.toy, y=y.toy, H1=H1.toy, maxit=10, phi.fun=phi.fun.toy, phi=phi.toy)

phi.toy.stage2 <- stage2(D1=D1.toy, D2=D2.toy, H1=H1.toy, H2=H2.toy,
 y=y.toy, z=z.toy, extractor=extractor.toy,
phi.fun=phi.fun.toy, E.theta=E.theta.toy, Edash.theta=Edash.theta.toy,
maxit=3, phi=phi.toy.stage1)

stage3(D1=D1.toy, D2=D2.toy, H1=H1.toy, H2=H2.toy, d=d.toy, maxit=3, phi=phi.toy.stage2)

# Now try with the true values of the hyperparameters:
phi.true <- phi.true.toy(phi=phi.toy)

stage3(D1=D1.toy, D2=D2.toy, H1=H1.toy, H2=H2.toy, d=d.toy, maxit=3, phi=phi.true)


[Package calibrator version 1.0-58 Index]