FDboost 1.1.0 (2022-07-12)
Miscellaneous
- Anisotropic tensor-product operators 
b1 %A0% b2 and
b1 %Xa0% b2 now also work when lambda is
specified for b1 and df is specified for
b2 (or vice versa). 
New features
- New function 
clr() to compute the centered-log-ratio
transform and its inverse for density-on-scalar regression in Bayes
spaces. 
- New dataset 
birthDistribution. 
- New vignette illustrating density-on-function regression on the
birthDistribution data. 
- Function 
factorize() added for tensor-product
factorization of estimated effects or models. 
FDboost 0.3.4 (2020-08-31)
Bug fixes
- Fix 
predict() for bsignal() with
newdata and the functional covariate given as a numeric
matrix, raised in #17. 
- Deprecated argument 
LINPACK in solve()
removed. 
FDboost 0.3.3 (2020-06-13)
New features
- It is now possible to specify several time variables as well as
factor time variables in the 
timeformula. This feature is
needed for the manifoldboost package. 
Miscellaneous
- The function 
stabsel.FDboost() now uses
applyFolds() instead of validateFDboost() to
do cross-validation with recomputation of the smooth offset. This is
only relevant for models with a functional response. This will change
results if the model contains base-learners like bbsc() or
bolsc(), as applyFolds() also recomputes the
Z-matrix for those base-learners. 
Bug fixes
- Adapted functions 
integrationWeights() and
integrationWeightsLeft() for unsorted time variables. 
- Changed code in 
predict.FDboost() such that interaction
effects of two functional covariates like
bsignal() %X% bsignal() can be predicted with new
data. 
- Adapt FDboost to R 4.0.1 by explicitly using the first entry of
dots$aggregate (i.e.,
dots$aggregate[1] != "sum") in
predict.FDboost() so that it also works with the default,
where aggregate is a vector of length 3 and later only the
first argument is used via match.arg(). 
FDboost 0.3.2 (2018-08-04)
Bug fixes
- Deprecated argument 
corrected in cvrisk()
removed. 
FDboost 0.3.1 (2018-05-10)
Bug fixes
cvrisk() has by default adequate folds for a noncyclic
fitted FDboostLSS model, see #14. 
Miscellaneous
- Replaced 
cBind() (which is deprecated) with
cbind(). 
FDboost 0.3.0 (2017-05-31)
User-visible changes
- New function 
bootstrapCI() to compute bootstrapped
coefficients. 
- Added the dataset 
emotion containing EEG and EMG
measures under different experimental conditions. 
- With scalar response, 
FDboost() now works with the
response as a vector (instead of a 1-row matrix); thus,
fitted() and predict() return a vector. 
Bug fixes
update.FDboost() now works with a scalar response. 
FDboost() works with family
Binomial(type = "glm"), see #1. 
applyFolds() works for factor response, see #7. 
cvLong() and cvMA() return a matrix for
only one resampling fold with B = 1 (proposed by Almond
Stoecker). 
Miscellaneous
- Adapt 
FDboost to mboost 2.8-0, which
allows for mstop = 0. 
- Restructure 
FDboostLSS() such that it calls
mboostLSS_fit() from gamboostLSS 2.0-0. 
- In 
FDboost, set
options("mboost_indexmin" = +Inf) to disable internal use
of ties in model fitting, as this breaks some methods for models with
responses in long format and for models containing
bhistx(), see #10. 
- Deprecated 
validateFDboost(), use
applyFolds() and bootstrapCI() instead. 
FDboost 0.2.0 (2016-05-26)
User-visible changes
- Added function 
applyFolds() to compute the optimal
stopping iteration. 
Bug fixes
- Allows for extrapolation in 
predict() with
bbsc(). 
FDboost 0.1.2 (2016-04-22)
Bug fixes
- Fixed a bug in 
bolsc(): correctly use the index in
bolsc()/bbsc(). Previously, each observation
was used only once for computing Z. 
User-visible changes
- Added function 
%Xa0% that computes a row-tensor product
of two base-learners where the penalty in one direction is zero. 
- Added function 
reweightData() that computes the data
for Bootstrap or cross-validation folds. 
- Added function 
stabsel.FDboost() that refits the smooth
offset in each fold. 
- Added argument 
fun to
validateFDboost(). 
- Added 
update.FDboost() that overwrites
update.mboost(). 
Miscellaneous
FDboost() works with
family = Binomial(). 
FDboost 0.1.1 (2016-04-06)
Bug fixes
- Fixed 
oobpred in validateFDboost() for
irregular response and resampling at the curve level so that
plot.validateFDboost() works for that case. 
- Fixed scope of formula in 
FDboost(): now the formula
given to mboost() within FDboost() uses the
variables in the environment of the formula specified in
FDboost(). 
Miscellaneous
plot.FDboost() works for more effects, especially for
effects like bolsc() %X% bhistx(). 
FDboost 0.1.0 (2016-03-10)
User-visible changes
- New operator 
%A0% for Kronecker product of two
base-learners with an anisotropic penalty for the special case where
lambda1 or lambda2 is zero. 
- The base-learner 
bbsc() can be used with
center = TRUE (derived by Almond Stoecker). 
- In 
FDboostLSS(), a list of one-sided formulas can be
specified for timeformula. 
Bug fixes
FDboostLSS() works with
families = GammaLSS(). 
Miscellaneous
- Operator 
%A% uses weights in the model call. This only
works correctly for weights on the level of blg1 and
blg2 (same as weights on rows and columns of the response
matrix). 
- Calls to internal functions of 
mboost are done using
mboost_intern(). 
hyper_olsc() is based on hyper_ols() from
mboost. 
FDboost 0.0.17 (2016-02-25)
User-visible changes
- Changed the operator 
%Xc% for the row tensor product of
two scalar covariates. The design matrix of the interaction effects is
constrained such that the interaction is centered around the intercept
and around the two main effects of the scalar covariates
(experimental!). Use, for example,
bols(x1) %Xc% bols(x2). 
FDboost 0.0.16 (2016-02-22)
User-visible changes
- Changed the operator 
%Xc% for row tensor product where
the sum-to-zero constraint is applied to the design matrix resulting
from the row-tensor product (experimental!). Specifically, an
intercept-column is first added, and then the sum-to-zero constraint is
applied. Use, for example, bolsc(x1) %Xc% bolsc(x2). 
- The functional index 
s is now used as
argsvals in the FPCA conducted within
bfpc(). 
FDboost 0.0.15 (2016-02-12)
User-visible changes
- New operator 
%A% that implies anisotropic penalties for
differently specified df in the two base-learners. 
Bug fixes
- No penalty is applied in the direction of 
ONEx in a
smooth intercept specified implicitly by ~1, for example,
bols(ONEx, intercept=FALSE, df=1) %A% bbs(time). 
Miscellaneous
- Effects containing 
%A% or %O% are not
expanded with the timeformula, allowing for different
effects over time in the model. 
FDboost 0.0.14 (2016-02-11)
User-visible changes
- Added the function 
FDboostLSS() to fit GAMLSS models
with functional data using R-package gamboostLSS. 
- New operator 
%Xc% for row tensor product where the
sum-to-zero constraint is applied to the design matrix resulting from
the row-tensor product (experimental!). 
- Allowed 
newdata to be a list in
predict.FDboost() when used with signal base-learners. 
- Expanded 
coef.FDboost() so that it works for
3-dimensional tensor products of the form
bhistx() %X% bolsc() %X% bolsc() (with David
Ruegamer). 
- Added a new possibility for scalar-on-function regression: if
timeformula=NULL, no Kronecker product with 1
is used, which changes the penalty (otherwise, the direction of
1 would also be penalized). 
Miscellaneous
- New dependency on R-package 
gamboostLSS. 
- Removed dependency on R-package 
MASS. 
- Used the argument 
prediction in the internal
computation of the base-learners (work in progress). 
- Throw an error if 
timeLab of the
hmatrix-object in bhistx() is not equal to the
time variable in timeformula. 
FDboost 0.0.13 (2015-11-17)
User-visible changes
- In function 
FDboost(), the offset is supplied
differently. For a scalar offset, use offset = "scalar".
The default remains offset = NULL. 
predict.FDboost() has a new argument
toFDboost (logical). 
fitted.FDboost() has argument toFDboost
explicitly (not only via ...). 
- New base-learner 
bhistx(), especially suited for
effects used with %X%, e.g.,
bhistx() %X% bolsc(). 
coef.FDboost() and plot.FDboost() now
handle effects like bhistx() %X% bolsc(). 
- For 
predict.FDboost() with effects
bhistx() and newdata, the latest mboostPatch
is necessary. 
Bug fixes
- The check for the necessity of a smooth offset works for missing
values in a regular response (spotted by Tore Erdmann).
 
FDboost 0.0.12 (2015-09-15)
- Internal experimental version.
 
FDboost 0.0.11 (2015-06-01)
User-visible changes
integrationWeights() now gives equal weights for
regular grids. 
- New base-learner 
bfpc() for a functional covariate
where both the functional covariate and the coefficient are expanded
using fPCA (experimental feature!). Only works for regularly observed
functional covariate. 
Bug fixes
coef.FDboost() only works for bhist() if
the time variable is the same in the timeformula and in
bhist(). 
predict.FDboost() now checks that only
type = "link" can be predicted for newdata. 
FDboost 0.0.10 (2015-04-16)
User-visible changes
- Changed the default difference penalties to first-order difference
(
differences = 1), improving identifiability. 
- New method 
cvrisk.FDboost() that uses (by default)
sampling on the levels of curves, which is important for functional
responses. 
- Reorganized documentation of 
cvrisk() and
validateFDboost(). 
- In 
bhist(), an effect can be standardized. 
Miscellaneous
- Added a 
CITATION file. 
- Uses 
mboost 2.4-2, which exports all important
functions. 
Bug fixes
main argument is always passed in
plot.FDboost(). 
bhist() and bconcurrent() now work for
equal time and s. 
predict.FDboost() works with tensor-product
base-learners like bl1 %X% bl2.