prediction 0.3.18
- under new maintainership
- various cosmetic/CRAN check updates
prediction 0.3.15
build_datalist() now works correctly with data.table
datasets. (#34, #35, h/t Dan Schrage)
build_datalist() dropped factor levels when replacing a
factor variable. (#39, h/t Tomasz Żółtak)
find_data() now respects subset and
na.actions arguments for svyglm() models.
(#37, h/t Tomasz Żółtak)
prediction 0.3.13
- Fixed a bug in
prediction_glm with the
data argument (Issue #32).
prediction 0.3.12
- Remove mnlogit dependency, as it has been removed from CRAN.
prediction 0.3.11
- Remove bigFastLm dependency, as it has been removed from CRAN.
prediction 0.3.10
- Added tests for
find_data() and
prediction.lm() to check for correct behavior in the
presence of missing data (na.action) and
subset arguments. (#28)
prediction 0.3.8
- Provisional support for variances of average predictions for GLMs.
(#17)
- Added an example dataset,
margex, borrowed from Stata’s
identically named data.
prediction 0.3.7
summary(prediction(...)) now reports variances of
average predictions, along with test statistics, p-values, and
confidence intervals, where supported. (#17)
- Added a function
prediction_summary() which simply
calls summary(prediction(...)).
- All methods now return additional attributes.
prediction 0.3.6
- Small fixes for failing CRAN checks. (#25)
- Remove
prediction.bigglm() method (from
biglm) due to failing tests. (#25)
prediction 0.3.5
- Fixed a bug that required specifying
stats::poly()
rather than just poly() in model formulae. (#22)
prediction 0.3.4
- Added
prediction.glmnet() method for “glmnet” objects
from glmnet. (#1)
prediction 0.3.3
prediction.merMod() gains an re.form
argument to pass forward to predict.merMod().
prediction 0.3.2
- Fix typo in “speedglm” that was overwriting “glm” method.
prediction 0.3.0
prediction 0.2.11
- Added
prediction.glmML() method for “glimML” objects
from aod. (#1)
- Added
prediction.glmQL() method for “glimQL” objects
from aod. (#1)
- Added
prediction.truncreg() method for “truncreg”
objects from truncreg. (#1)
- Noted implicit support for “tobit” objects from
AER. (#1)
prediction 0.2.10
- Added
prediction.bruto() method for “bruto” objects
from mda. (#1)
- Added
prediction.fda() method for “fda” objects from
mda. (#1)
- Added
prediction.mars() method for “mars” objects from
mda. (#1)
- Added
prediction.mda() method for “mda” objects from
mda. (#1)
- Added
prediction.polyreg() method for “polyreg” objects
from mda. (#1)
prediction 0.2.9
- Added
prediction.speedglm() and
prediction.speedlm() methods for “speedglm” and “speedlm”
objects from speedglm. (#1)
- Added
prediction.bigLm() method for “bigLm” objects
from bigFastlm. (#1)
- Added
prediction.biglm() and
prediction.bigglm() methods for “biglm” and “bigglm”
objects from biglm, including those based by
"ffdf" from ff. (#1)
prediction 0.2.8
- Changed internal behavior of
build_datalist(). The
function now returns an an at_specification attribute,
which is a data frame representation of the at
argument.
prediction 0.2.6
- Due to a change in gam_1.15,
prediction.gam() is now
prediction.Gam() for “Gam” objects from
gam. (#1)
prediction 0.2.6
- Added
prediction.train() method for “train” objects
from caret. (#1)
prediction 0.2.5
- The
at argument in build_datalist() now
accepts a data frame of combinations for limiting the set of
levels.
prediction 0.2.3
- Most
prediction() methods gain a (experimental)
calculate_se argument, which regulates whether to calculate
standard errors for predictions. Setting to FALSE can
improve performance if they are not needed.
prediction 0.2.3
build_datalist() gains an as.data.frame
argument, which - if TRUE - returns a stacked data frame
rather than a list. This argument is now used internally in most
prediction() functions in an effort to improve performance.
(#18)
prediction 0.2.2
- Expanded test suite scope and fixed a few small bugs.
- Added a
summary.prediction() method to interact with
the average predicted values that are printed when
at != NULL.
prediction 0.2.1
- Added
prediction.knnreg() method for “knnreg” objects
from caret. (#1)
- Added
prediction.gausspr() method for “gausspr” objects
from kernlab. (#1)
- Added
prediction.ksvm() method for “ksvm” objects from
kernlab. (#1)
- Added
prediction.kqr() method for “kqr” objects from
kernlab. (#1)
- Added
prediction.earth() method for “earth” objects
from earth. (#1)
- Added
prediction.rpart() method for “rpart” objects
from rpart. (#1)
prediction 0.2.0
- CRAN Release.
- Added
mean_or_mode.data.frame() and
median_or_mode.data.frame() methods.
prediction 0.1.17
- Added
prediction.zeroinfl() method for “zeroinfl”
objects from pscl. (#1)
- Added
prediction.hurdle() method for “hurdle” objects
from pscl. (#1)
- Added
prediction.lme() method for “lme” and “nlme”
objects from nlme. (#1)
- Documented
prediction.merMod().
prediction 0.1.16
- Added
prediction.plm() method for “plm” objects from
plm. (#1)
prediction 0.1.15
- Expanded test suite considerably and updated
CONTRIBUTING.md to reflect expected test-driven
development.
- A few small code tweaks and bug fixes resulting from the updated
test suite.
prediction 0.1.14
- Added
prediction.mnp() method for “mnp” objects from
MNP. (#1)
- Added
prediction.mnlogit() method for “mnlogit” objects
from mnlogit. (#1)
- Added
prediction.gee() method for “gee” objects from
gee. (#1)
- Added
prediction.lqs() method for “lqs” objects from
MASS. (#1)
- Added
prediction.mca() method for “mca” objects from
MASS. (#1)
- Noted (built-in) support for “brglm” objects from
brglm via the
prediction.glm() method.
(#1)
prediction 0.1.13
- Added a
category argument to prediction()
methods for models of multilevel outcomes (e.g., ordered probit, etc.)
to be dictate which level is expressed as the "fitted"
column. (#14)
- Added an
at argument to prediction()
methods. (#13)
- Made
mean_or_mode() and median_or_mode()
S3 generics.
- Fixed a bug in
mean_or_mode() and
median_or_mode() where incorrect factor levels were being
returned.
prediction 0.1.12
- Added
prediction.princomp() method for “princomp”
objects from stats. (#1)
- Added
prediction.ppr() method for “ppr” objects from
stats. (#1)
- Added
prediction.naiveBayes() method for “naiveBayes”
objects from e1071. (#1)
- Added
prediction.rlm() method for “rlm” objects from
MASS. (#1)
- Added
prediction.qda() method for “qda” objects from
MASS. (#1)
- Added
prediction.lda() method for “lda” objects from
MASS. (#1)
find_data() now respects the subset
argument in an original model call. (#15)
find_data() now respects the na.action
argument in an original model call. (#15)
find_data() now gracefully fails when a model is
specified without a formula. (#16)
prediction() methods no longer add a “fit” or “se.fit”
class to any columns. Fitted values are identifiable by the column name
only.
prediction 0.1.11
build_datalist() now returns at value
combinations as a list.
prediction 0.1.10
- Added
prediction.nnet() method for “nnet” and
“multinom” objects from nnet. (#1)
prediction 0.1.9
prediction() methods now return the value of
data as part of the response data frame. (#8, h/t Ben
Whalley)
- Slight change to
find_data() methods for
"crch" and "hxlr". (#5)
- Added
prediction.glmx() and
prediction.hetglm() methods for “glmx” and “hetglm” objects
from glmx. (#1)
- Added
prediction.betareg() method for “betareg” objects
from betareg. (#1)
- Added
prediction.rq() method for “rq” objects from
quantreg. (#1)
- Added
prediction.gam() method for “gam” objects from
gam. (#1)
- Expanded basic test suite.
prediction 0.1.8
- Added
prediction() and find_data() methods
for "crch" "hxlr" objects from
crch. (#4, h/t Carl Ganz)
prediction 0.1.7
- Added
prediction() and find_data() methods
for "merMod" objects from lme4. (#1)
prediction 0.1.6
- Moved the
seq_range() function from
margins to prediction.
- Moved the
build_datalist() function from
margins to prediction. This will
simplify the ability to calculate arbitrary predictions.
prediction 0.1.5
- Added
prediction.svm() method for objects of class
"svm" from e1071. (#1)
- Fixed a bug in
prediction.polr() when attempting to
pass a type argument, which is always ignored. A warning is
now issued when attempting to override this.
prediction 0.1.4
- Added
mean_or_mode() and median_or_mode()
functions, which provide a simple way to aggregate a variable of factor
or numeric type. (#3)
- Added
prediction() methods for various time-series
model classes: “ar”, “arima0”, and “Arima”.
prediction 0.1.3
find_data() is now a generic, methods for “lm”, “glm”,
and “svyglm” classes. (#2, h/t Carl Ganz)
prediction 0.1.2
- Added support for “svyglm” class from the survey
package. (#1)
- Added tentative support for “clm” class from the
ordinal package. (#1)
prediction 0.1.0
- Initial package released.