abclass 0.5.0
Major changes
- Simplified specification of group penalty via
abclass.control(). 
Minor changes
- Changed the default 
alignment to lambda
for cv.abclass() and refit in
et.abclass() if a sequence of lambda’s is specified. A
warning message would be thrown out for the former. 
abclass 0.4.0
New features
- Added support of sparse matrix 
x of class
sparseMatrix (provided by the {Matrix}
package) for abclass() and
predict.abclass(). 
- Added new functions named 
cv.abclass() and
et.abclass() for training and tuning the angle-based
classifiers with cross-validation and an efficient tuning procedure for
lasso-type algorithms, respectively. See the corresponding function
documentation for details. 
- Added experimental classifiers with sup-norm penalties. See the
functions 
supclass() and cv.supclass() for
details. 
Major Changes
- Simplified the function 
abclass() and moved the tuning
procedure by cross-validation to the function
cv.abclass(). 
Minor Changes
- Changed the default values of the following arguments for
abclass.control().
alpha: from 0.5 to 1.0 
epsilon: from 1e-3 to
1e-4 
 
Bug fixes
- Fixed 
alignment in abclass.control(). 
abclass 0.3.0
New features
- Added experimental group-wise regularization by group SCAD and group
MCP penalty.
 
- Added a new function named 
abclass.control() to specify
the control parameters and simplify the main function interface. 
Minor changes
- Renamed the argument 
max_iter to maxit for
abclass(). 
Bug fixes
- Fixed the validation indices in the cross-validation procedure
 
abclass 0.2.0
New features
- Added experimental group-wise regularization by group lasso
penalty.
 
Minor changes
- Removed the function call from the return of 
abclass()
to avoid unnecessarily large returned objects 
- Changed the default value of 
lum_c for
abclass() from 0 to 1. 
- Renamed the argument 
rel_tol to epsilon
for abclass(). 
Bug fixes
- Fixed the first derivatives of the boosting loss
 
- Fixed the label prediction by using the fitted inner products
instead of the probability estimates
 
- Fixed the computation of regularization terms for verbose outputs in
AbclassNet 
- Fixed the computation of validation accuracy in
cross-validation
 
- Fixed the assignment of 
lum_c in the associated header
files. 
- Fixed the computation of lower bound for distinct observation
weights
 
abclass 0.1.0
New features
- The first release of abclass providing the
multi-category angle-based large-margin classifiers with various loss
functions.