abess 0.4.5
- Support generalized linear model for ordinal response, also named as rank learning in machine learning community.
- Support robust principal analysis
- Modify R package structure to make many internal components are reusable.
- Update README.md
abess 0.4.0
- Support generalized linear model when the link function is Gamma distribution. By setting
family = "gamma"
in abess
function, users can analyze the dataset with a positive valued and skewed response.
- Support flexible support size for sequential principal component analysis (PCA), accompanied with several helpful generic function like
plot
.
- Support user-specified cross validation division for
abess
and abesspca
function by additional argument foldid
.
- Support robust principal component analysis now. A new R function
abessrpca
can access it.
- Improve the R package document by: adding more details and giving more links related to core functions.
abess 0.3.0
- Add docs2search for R’s website
- Support important searching to improve computational efficiency when dimension is 10,000.
abess 0.2.0
- Support sparse matrix as input
- Support golden section search for optimal support size
- Support ridge-regularized penalty as a generic component
- Support group subset selection as a generic component
- Best subset selection for principal component analysis via abesspca
- Bug fixed
abess 0.1.0
- Initial stable version abess package
- Support best subset selection for linear regression, logistic regression, poisson regression, cox proportional hazard regression, multi-gaussian regression, multi-nominal regression.
- Support nuisance selection as a generic component
- Unified API for cross validation and information criterion to select the optimal support size.
- A documentation website is support for abess package