dgpsi 2.4.0
- One can now use
design()
to implement sequential designs using f
and a fixed candidate set passed to x_cand
with y_cand = NULL
.
- The sizes of
.pkl
files written by write()
are significantly reduced.
- One can now set different kernel functions to nodes in different layers in a DGP emulator by passing a vector of kernel function names to
name
argument of dgp()
.
- The default number of imputations
B
in dgp()
and lgp()
is changed to 10
for faster validations and predictions.
- The default method for sequential designs in
design()
is changed to vigf()
.
- A new argument
new_wave
is added to design()
to allow users to resume sequential designs with or without a separate wave.
- A bug in
vigf()
is fixed when object
is an instance of the bundle
class and batch_size
is greater than one.
- Static and dynamic pruning of DGP structures are implemented in
prune()
and design()
(via the new arguments pruning
and control
) respectively.
- Some redundant codes are removed from
update()
which makes design()
slightly faster.
limits
argument in design()
is now required when x_cand
is not supplied to avoid under-sampling using the limits inferred from the training data.
design()
now supports f
that produce NA
as outputs. This is useful to prevent the sequential design from stopping due to errors or NA
outputs from a simulator at some input locations identified by the sequential design process.
- A bug is fixed in
design()
when x_cand
is supplied and the input dimension is one.
alm()
, mice()
, pei()
, and vigf()
now accept separate candidate sets (even with different number of candidate points) via x_cand
for bundle emulators.
- A slot called
id
is added to instances of gp
, dgp
, lgp
, and bundle
classes to uniquely identify the emulators. id
can also be passed to instances of gp
, dgp
,lgp
, and bundle
classes by the new id
argument in gp()
, dgp()
, lgp()
, and pack()
.
pack()
can now accept a list of (D)GP emulators as the input.
- The
check_point
argument is removed from design()
and replaced by autosave
.
- Automatic saving of emulators during the sequential design is added to
design()
through the new argument autosave
.
- When a customized evaluation function is provided to
design()
via eval
, the design information in previous waves will be retained as long as the previous waves of the sequential design also use customized evaluation functions. If different customized evaluation functions are supplied to design()
in different waves, the trace plot of RMSEs produced by draw()
will show RMSEs from different evaluation functions in different waves.
- One can now link the same emulator multiple times in a chain via
lgp()
by setting different linking information for the emulator via set_linked_idx()
.
- Updates of documentations and vignettes.
dgpsi 2.3.0
- A bug from the underlying Python implementations is fixed when
name = 'matern2.5'
in gp()
and dgp()
.
- Thanks to @yyimingucl, a bug from the underlying Python implementations for the MICE sequential design criterion
mice()
is fixed.
- An argument
reset
is added to update()
and design()
to reset hyperparameters of a (D)GP emulator to their initial values (that were specified when the emulator is initialized) after the input and output of the emulator are updated and before the emulator is refitted. This argument can be useful for sequential designs in cases where the hyperparameters of a (D)GP emulator get caught in suboptimal estimates. In such circumstances, one can set reset = TRUE
to reinitialize the (D)GP emulator in some steps of the sequential designs as a strategy to escape the poor estimates.
- The refitting of an emulator in the final step of a sequential design is no longer forced in
design()
.
- An argument
type
is added to plot()
to allow users to draw OOS validation plots with testing data shown as a line instead of individual points when the emulator’s input is one-dimensional and style = 1
.
- Thanks to @tjmckinley, an issue relating to
libstdc++.so.6
on Linux machines when R is restarting after the installation of the package is fixed.
alm()
and mice()
can locate new design points for stochastic simulators with (D)GP or bundle emulators that can deal with stochastic outputs.
design()
can be used to construct (D)GP or bundle emulators adaptively by utilizing multiple realizations from a stochastic simulator at the same design positions through the new argument reps
when method = alm
or method = mice
.
- A new slot called
specs
is added to the objects returned by gp()
and dgp()
that contains the key information of the kernel functions used in the constructions of GP and DGP emulators.
- Due to a bug in the latest version of an underlying Python package, the emulators saved by
write()
in version 2.1.6
and 2.2.0
may not work properly with update()
and design()
when they are loaded back by read()
in this version. This bug has been addressed in this version so emulators saved in this version would not have the compatibility issue in future version.
- A new sequential design criterion, called the Variance of Improvement for Global Fit (VIGF), is added to the package with the function
vigf()
.
- The sampling from an existing candidate set
x_cand
in design()
is changed from a random sampling to a conditioned Latin Hypercube sampling in clhs
package.
- The python environment is now automatically installed or invoked when a function from the package is executed. One does not need to run
init_py()
to activate the required python environment but init_py()
is still useful to re-install and uninstall the underlying python environment. A verb
argument is added to init_py()
to switch on/off the trace information.
dgpsi 2.2.0
- The efficiency and speed of imputations involved in the training and predictions of DGP emulators are significantly improved (achieving roughly 3x faster training and imputations) by utilizing blocked Gibbs sampling that imputes latent variables layer-wise rather than node-wise. The blocked Gibbs sampling is now the default method for DGP emulator inference and can be changed back to the old node-wise approach by setting
blocked_gibbs = FALSE
in dgp()
.
- One can now optimize GP components that are contained in the same layer of a DGP emulator in parallel during the DGP emulator training, using multiple cores by setting the new argument
cores
in dgp()
. This option is useful and can accelerate the training speed when the input dimension is moderately large (in which case there is a large number of GP components to be optimized) and the optimization of GP components is computationally expensive, e.g., when share = FALSE
in which case input dimensions to individual GP components have different lengthscales.
- Thanks to @tjmckinley, a bug in
update()
when the object
is an instance of the dgp
class (that has been trimmed by window()
) is fixed.
- Thanks to @tjmckinley, some R memory issues due to the underlying Python implementations are rectified.
set_seed()
function is added to ensure reproducible results from the package.
- A bug is fixed when candidate sets
x_cand
and y_cand
are provided to design()
.
- One can choose different color palettes using the new argument
color
in plot()
when style = 2
.
set_linked_idx()
allows constructions of different (D)GP emulators (in terms of different connections to the feeding layers) from a same (D)GP emulator.
dgpsi 2.1.6
- A bug is found in multi-core predictions in
predict()
when object
is an instance of lgp
class and x
is a list. This bug has been fixed in this version.
- Thanks to @tjmckinley, an issue (
/usr/lib/x86_64-linux-gnu/libstdc++.so.6: version 'GLIBCXX_3.4.30' not found
) encountered in Linux machines is fixed automatically during the execution of init_py()
.
gp()
and dgp()
allow users to specify the value of scale parameters and whether to estimate the parameters.
gp()
and dgp()
allow users to specify the bounds of lengthscales.
- The jointly robust prior (Gu, 2019) is implemented as the default inference approach for GP emulators in
gp()
.
- The default value of
lengthscale
in gp()
is changed from 0.2
to 0.1
, and the default value for nugget
in gp()
is changed from 1e-6
to 1e-8
if nugget_est = FALSE
.
- One can now specify the number of GP nodes in each layer (except for the final layer) of a DGP emulator via the
node
argument in dgp()
.
- Training data are now contained in the S3 classes
gp
and dgp
.
- The RMSEs (without the min-max normalization) of emulators are now contained in the S3 classes
gp
, dgp
, and lgp
after the execution of validate()
.
window()
function is added to trim the traces and obtain new point estimates of DGP model parameters for predictions.
- The min-max normalization can now be switched off in
plot()
by setting the value of min_max
.
- The default number of imputations
B
for dgp()
is changed from 50
to 30
to better balance the uncertainty and the speed of DGP emulator predictions. A new function set_imp()
is made available to change the number of imputations of a trained DGP emulator so one can either achieve faster predictions by further reducing the number of imputations, or account for more imputation uncertainties by increasing the number of imputations, without re-training the emulator.
- The default number of imputations
B
for continue()
is set to NULL
, in which case the same number of imputations used in object
will be applied.
nugget
argument of dgp()
now specifies the nugget values for GP nodes in different layers rather than GP nodes in the final layer.
- The speed of predictions from DGP emulators with squared exponential kernels is significantly improved and is roughly 3x faster than the implementations in version
2.1.5
.
- The implementation of sequential designs (with two vignettes) of (D)GP emulators using different criterion is made available.
- Thanks to @tjmckinley, an internal reordering issue in
plot()
is fixed.
init_py()
now allows users to reinstall and uninstall the underlying Python environment.
- A bug that occurs when a linked DGP emulator involves a DGP emulator with external inputs is fixed.
Intel SVML
will now be installed with the Python environment automatically for Intel users for faster implementations.
dgpsi 2.1.5
- Initial release of the R interface to the Python package
dgpsi v2.1.5
.