rockchalk package NEWS -- history of user-visible changes.
Copyright (C) 2013-9 Paul E. Johnson.
* version 1.8.133
** drawnorm: new function to illustrate normal distribution
** plotSlopes: now accepts discrete plotx variables, makes a modified coefplot
** plotSlopes: should now be identical to plotCurves, plotCurves should be deprecated
** descriptiveTable: handy for making stat summaries of regression tables
** outreg: now has centering with siunitx as an option
* version 1.8.114
** silence warnings cause by R update
* version 1.8.96 2015-12-15
** skewness and kurtosis added to summary stats for numeric variables.
* version 1.8.94 2015-11-01
** plotCurves. Replace hard coded value 40 for number of points at
which to evaluate plotx. Tom Wenseleers suggested.
* version 1.8.91 2015-01-29
** outreg enhancements suggested by Irving Llamosas-Rosas, allow users
pass in standard errors and p-values. Argments Blist, SElist, etc.
** plotSlopes and plotCurves
allow level argument to pass on to predict methods. Suggested by
Tom Wenseleers.
** New function: pctable for percentage tables.
** Learned how to document several functions in same file, reducing
clutter in man directory.
** Re-organize package dependencies, shift some from required to
import, when only examples need those packages
* version 1.8.1 2013-09-22
This is a minor bugfix update.
** genCorrelatedData2: calculations were correct, but printout of
formula was in error (off by one in beta1[2:(d+1))]
** plotCurves: plotx always need to take series of points across axis
until I learn way to ask formula if plotx has curvature in it.
* version 1.8 2013-07-30
This is the end of the Spring semester, so its time for the new rockchalk
release.
** New, general, flexible framework for calculating marginal effects
in regression models, linear or otherwise.
*** newdata function works. It can scan a regression, isolate the
predictors, and then make a "mix and match" new data object for use
with predict function. This is convenient for users but also very
flexible.
*** The newdata framework is built on top of "divider" methods that can
check whether a variable is numeric or categorical, and select
example values according to user-specified criteria.
*** predictOMatic works dependably! Please try
example(predictOMatic). The problem with single predictor models
that bugged users of rockchalk 1.6.2 has been solved.
*** predictOMatic argument interval = c("none", "confidence",
"prediction"). Guess what that is supposed to do? For glm,
which does not provide a confidence interval, I've written code
for an approximate Wald type CI, and hope to do better in future.
** Regression diagnostics.
*** getPartialCor: get partial correlations from a fitted model
(student convenience).
*** getDeltaRsquare: Returns the change in estimated R-square observed
when each predictor is removed. This is the squared semi-partial
correlation coefficients (student convenience).
*** mcDiangose for multicollinearity diagnostics (student convenience)
** MeanCenter: add arguments to make selection of variables for
centering more convenient when users don't like the automatic
options centerOnlyInteractors.
** plotSlopes, plotCurves:
*** Added intervals argument, for confidence and prediction intervals.
*** Added opacity argument to determine darkness of interval regions
(which use the transparency "alpha layer.").
*** A lot of fiddling under the hood to make colors consistent when
levels of modx are altered to compare plots of a given model.
*** Can produce a simple regression prediction plot if modx argument
is omitted. This is a widely requested feature.
Please run example(plotSlopes) and example(plotCurves)
*** Changes under the hood. The common plotting functions of
plotSlopes and plotCurves are abstracted into a function
plotFancy, so now this will be eaiser for me to maintain. The
plotting ritual is the same, why keep 2 functions, you ask?
plotCurves tolerates more complicated regression
formula. plotSlopes leads to testSlopes, and hence to
plot.testSlopes.
** addLines: communication between 2 dimensional regression plots and 3 dimensional plots from plotPlane. Run example(addLines).
** plot.testSlopes. Run testSlopes on an interactive model. For a
model with 2 ocontinuous predictors that interact, this will generate
an ABSOLUTELY EXCELLENT and highly informative plot displaying the
effect of the interaction.
** outreg: LaTeX tables from regression models.
*** Reworked with new arguments to make tables for more types
of regressions. There's quite a bit more room for users to customize
the type of diagnostics they want to report.
The wide variety of output types from regression models is very
bothersome. I refuse to write a separate outreg method for each
different regression packages. If you want to use a package
from an author who is willing to do that, consider the "texreg"
package.
*** outreg2HTML. converts outreg to HTML markup and into a file.
Intended for importation into word processor programs.
** New vignette Rstyle. Most of the source-code files have been reformatted
to comply with my advice.
** genCorrelatedData2
*** genCorrelatedData2. For regression examples, suppose you want to
have 6 columns of an MVN with a certain mean and covariance
structure. And you want the regression formula to have
interactions and squared-terms. No more hassle. This is a
framework that works. Users set the mean, standard deviations, and
correlation values in various ways. Run
example(genCorrelatedData2).
*** To support that, there are more generally useful
functions. lazyCor and lazyCov are flexible ways to create
correlation and covariance matrices. As the names suggest, they
are for lazy users who just want to specify some information and
get the right thing. This requires a set of transformation
functions, to receive vech and create matrices, and so forth.
Check genCorrelatedData.R, for vech2Corr, makeVec, makeSymmetric,
checkPosDef. The latter, which I am surprised not to find in the
base of R itself, imitates code in the MASS package for
ascertaining if a matrix is positive definite.
*** Small, almost microscopic, revision of MASS package mvrnorm
function to assure replication of MVN draws when the sample size
is adjusted. The first rows of the resulting MVN draw will be the
same, no matter how the "n" argument is changed. The same change
has been made in the mvtnorm package's MVN random generator. While
this is a very small code change, it does solve some very
mysterious simulation results that have been obtained with MASS
mvrnorm in our lab.