msaenet 3.1.2
Improvements
- The coefficient profile plot now has a new default color palette
(new Tableau 10). The updated palette offers a more refined and visually
appealing look, while also improving accessibility for users with
color-vision deficiencies. The color palette is consistency applied
across multiple graphical elements in all plot types (#13).
- Added a note in the vignette about possible graphical parameters for
labeling the selected variables supported by the plotting methods
(thanks, @xingxingyanjing, #12).
- Simplified and optimized vignette and readme plotting chunk options
(#14).
- Fixed typos and improved text style in documentation (#14).
msaenet 3.1.1
Improvements
- Used a proper, three-component version number following Semantic
Versioning.
- Fixed warnings about single lambda (#11).
- Fixed “lost braces” check notes on r-devel and check notes about
LazyData.
- Fixed code linting issues.
- Used GitHub Actions to build the pkgdown site.
msaenet 3.1
Improvements
- Added detailed signal-to-noise ratio (SNR) definition in
msaenet.sim.gaussian().
- Updated the example code in the vignette to make it work better with
the most recent version of glmnet (2.0-16).
- Updated GitHub repository links due to the handle change.
- Updated the vignette style.
msaenet 3.0
New features
- Added a new argument penalty.factor.initto support
customized penalty factor applied to each coefficient in the initial
estimation step. This is useful for incorporating prior information
about variable weights, for example, emphasizing specific clinical
variables. We thank Xin Wang from University of Michigan for this
feedback (#4).
msaenet 2.9
Improvements
msaenet 2.8
New features
- Added a Cleveland dot plot option type = "dotplot"inplot.msaenet(). This plot offers a direct visualization of
the model coefficients at the optimal step.
msaenet 2.7
Bug fixes
- Fixed the missing arguments issue when
init = "ridge".
msaenet 2.6
Improvements
- Added two arguments lower.limitsandupper.limitsto support coefficient constraints inaenet()andmsaenet()(#1).
msaenet 2.5
Improvements
- Better code indentation style.
- Update gallery images in README.md.
msaenet 2.4
Improvements
- Improved graphical details for coefficient path plots, following the
general graphic style in the ESL (The Elements of Statistical
Learning) book.
- More options available in plot.msaenet()for extra
flexibility: it is now possible to set important properties of the label
appearance such as position, offset, font size, and axis titles via the
new argumentslabel.pos,label.offset,label.cex,xlab, andylab.
msaenet 2.3
Improvements
- Reduced model saturation cases and improved speed at the
initialization step for MCP-net and SCAD-net based models when
init = "ridge", by using the ridge estimation
implementation fromglmnet. As a benefit, we now have a
more aligned baseline for the comparison between elastic-net based
models and MCP-net/SCAD-net based models wheninit = "ridge".
- Style improvements in code and examples: reduced whitespace with a
new formatting scheme.
msaenet 2.2
New features
- Added BIC, EBIC, and AIC in addition to k-fold cross-validation for
model selection.
- Added new arguments tuneandtune.nstepsto controls this for selecting the optimal model for each step, and the
optimal model among all steps (i.e. the optimal step).
- Added arguments ebic.gammaandebic.gamma.nstepsto control the EBIC tuning parameter, ifebicis specified bytuneortune.nsteps.
- Redesigned plot function: now supports two types of plots
(coefficient path, screeplot of the optimal step selection criterion),
optimal step highlighting, variable labeling, and color palette
customization. See ?plot.msaenetfor details.
Improvements
- Renamed previous argument gamma(scaling factor for
adaptive weights) toscaleto avoid possible
confusion.
- Reset the default values of candidate concavity parameter
gammasto be 3.7 for SCAD-net and 3 for MCP-net.
- Unified the supported model familyin all model types
to be"gaussian","binomial","poisson", and"cox".
msaenet 2.1
New features
- Added functions msaenet.sim.binomial(),msaenet.sim.poisson(),msaenet.sim.cox()to
generate simulation data for logistic, Poisson, and Cox regression
models.
- Added function msaenet.fn()for computing the number of
false negative selections in msaenet models.
- Added function msaenet.mse()for computing mean squared
error (MSE).
Improvements
- Speed improvements in msaenet.sim.gaussian()by more
vectorization when generating correlation matrices.
- Added parameters max.iterandepsilonfor
MCP-net and SCAD-net related functions to have finer control over
convergence criterion. By default,max.iter = 10000andepsilon = 1e-4.
msaenet 2.0
New features
- Added amnet()to support adaptive MCP-net.
- Added asnet()to support adaptive SCAD-net.
- Added msamnet()to support multi-step adaptive
MCP-net.
- Added msasnet()to support for multi-step adaptive
SCAD-net.
- Added msaenet.nzv.all()for displaying the indices of
non-zero variables in all adaptive estimation steps.
Improvements
- More flexible predict.msaenetmethod allowing users to
specify prediction type.
msaenet 1.1
New features
- Added method coeffor extracting model coefficients.
See?coef.msaenetfor details.
Improvements
- New documentation website generated by pkgdown, with a full set of
function documentation and vignettes available.
- Added Windows continuous integration support using AppVeyor.
msaenet 1.0
New features
- Initial version of the msaenet package.