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bestNormalize 1.9.1
- New function,
bestLogConstant, that uses the same
machinery to pick the best value of a constant to use when logging a
variable, e.g. the one that makes the distribution look the most normal,
especially useful for non-positive or zero-inflated data. Currently
experimental.
- Taking out tests that failed due to dependent package update (does
not impact default bestNormalize behavior). See
(issue)[https://github.com/gmgeorg/LambertW/issues/3].
bestNormalize 1.9.0
- Add S3 methods that helps
step_orderNorm() to work with
parallel processing.
- Add S3 methods that helps
step_best_normalize() to work
with parallel processing.
- Add a new transformation: the double reversed log (@rempsyc #18)
- Fix issues in CRAN checks
bestNormalize 1.8.3
- updating print functionality to remain compatible with recipes.
- updated term selection machinery to remain compatible with
recipes.
bestNormalize 1.8.2
- improving scalability of
boxcox in response to issue
10; thank you to Krzysztof Dyba (kadyb) for the suggestions.
- improved scalability of
yeojohnson, thanks to Emil
Hvitfeldt (EmilHvitfeldt)
for his work on this problem for the recipes package here.
- updated tests to remain compatible with new recipes package
(>0.1.16)
bestNormalize 1.8.1
- update citation (new R Journal publication!)
- fix/add features to
tidy method to work more generally,
provide easy access to chosen transformations (responding to issue
9)
bestNormalize 1.8.0
- added packagedown website here:
https://petersonr.github.io/bestNormalize
- Implemented GH actions (code coverage and R CMD check) via
usethis in response to issue
7
- Improved scalability of ORQ transformation via
n_logit_fit argument, with default of 10000. This should
substantially decrease memory use of orderNorm while only
minimally affecting the out-of-domain approximations.
- Updated documentation
bestNormalize 1.7.0
- changed
step_bestNormalize to
step_best_normalize, responding to 8
- Fixed error in documentation regarding
LambertW
transformation types (thank you to Georg M. Goerg, the author of
LambertW, for pointing this out).
- Add
center_scale transform as default when
standardize == TRUE
- Added error when trying to use repeated CV with much too small of
folds
- Changed a few
T and F to TRUE
and FALSE
- Added documentation of how one can use
scales and
ggplot2 to visualize all transformations.
- Added
butcher and axe functionality in
order to improve scalability of step_* functions
- Improved
tidy functionality with bestNormalize and
step_best_normalize
bestNormalize 1.6.1
- Fixed bug that was causing simple transforms to fail in
bestNormalize
- Updated to new LambertW version in dependencies (request from
CRAN)
bestNormalize 1.6.0
- Added ability to supply user-defined transformations and associated
vignette
- Added in ability to supply user-defined normalization statistics and
(the same) associated vignette
- Take out
standardize option from
no_transform so x.t always matches input
vector.
- Minor programming improvements
bestNormalize 1.5.0
- Added
step_bestNormalize and
step_orderNorm functions for implementation within
recipes.
- Changed default to
warn = FALSE when calling
bestNormalize. If a transformation doesn’t work, warnings
will no longer be shown by default unless warn is
set to TRUE.
bestNormalize 1.4.3
- Allow options to be passed through bestNormalize to specific
transformation functions
- Slight bug fix to square root transformation (a = 0 by default, not
.001)
- Slight bug fix in the “quiet” argument for bestNormalize with
LOO
- Slight bug fix to
plot.bestNormalize which was
improperly labeling transformations
exp_x having trouble with standardize
option, so added option allow_exp_x to
bestNormalize to allow a workaround, and changed it so if
any infinite values are produced during the transformation, exp_x will
not work (that way, bestNormalize will not include this in
its results).
- Progress bar will now only displayed if
quiet is
FALSE and length(x) > 2000
bestNormalize 1.4.2
- Update citation to point to newly published work.
- Update maintainer email to new address (same person, new
affiliation).
bestNormalize 1.4.1
- Correctly subtract 1/2 from ranks in ORQ transformation to make
quantile estimation unbiased (this was a bug in 1.3.0, as ranks start at
1, not zero). Divides by n instead of n+1.
- Specify the weights for the GLM in the ORQ transformation to be the
number of observations. This doesn’t change the transformation but seems
to have a bit faster computational speed, and it’s more mathematically
tractable.
- Other various bug fixes to tests and to plotting functions.
bestNormalize 1.3.0
- Add 1/2 to ranks in ORQ transformation to make quantile estimation
unbiased (should have minimal impact)
- Add option
loo for leave-one-out cross-validation
- Add progress bar for cross-validation methods (both with/without
parallel)
- Add “no_transform” function - does the same thing as I(x) but in the
syntax of other transformations (this allows the normalization
statistics to also be calculated if no transformation is
performed).
- Add support for lambert transforms of type “h” in the
bestNormalize function via allow_lambert_h
argument.
- Add “before standardization” to printout of different transforms’
means and sds to clarify output
bestNormalize 1.2.0
- Added other transformations commonly used to normalize a vector
- exponential, log, square root, arcsinh
- Lambert WxF is no longer done by default by bestNormalize since it
is unstable on certain OS (Linux, Solaris), and does not abide by the
CRAN policy.
bestNormalize 1.1.0
- Clarified that the transformations are standardized by default, and
providing option to not standardize in transformations
- Updated tests to run a bit faster and to use proper S3 classes
bestNormalize 1.0.1
- Added references for original papers (Van der Waerden, Bartlett)
that cite the basis for the orderNorm transformation, as well as
discussion in Beasley (2009)
- Edited description to clarify that this procedure is a new
adaptation of an older technique rather than a new technique in
itself
bestNormalize 1.0.0
Added feature to estimate out-of-sample normality statistics in
bestNormalize instead of in-sample ones via repeated
cross-validation
- Note: set
out_of_sample = FALSE to maintain
backward-compatibility with prior versions and set
allow_orderNorm = FALSE as well so that it isn’t
automatically selected
Improved extrapolation of the ORQ (orderNorm) method
- Instead of linear extrapolation, it uses binomial (logit-link) model
on ranks
- No more issues with Cauchy transformation
Added plotting feature for transformation objects
Cleared up some documentation
bestNormalize 0.2.2
- Changed the name of the orderNorm technique to “Ordered Quantile
normalization”.
bestNormalize 0.2.1
- Made description more clear in response to comments from CRAN
bestNormalize 0.2.0
First submission to CRAN
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