glmnet is a package that fits the regularization path for linear, two- and multi-class logistic regression models with "elastic net" regularization (tunable mixture of L1 and L2 penalties).
glmnet uses pathwise coordinate descent, and is very fast.

Some of the features of glmnet:

* by default it computes the path at 100 uniformly spaced (on the log scale) values of the regularization parameter * glmnet appears to be faster than any of the packages that are freely available, in some cases by two orders of magnitude. * recognizes and exploits sparse input matrices (ala Matrix package). Coefficient matrices are output in sparse matrix representation. * penalty is (1-a)*||\beta||_2^2 +a*||beta||_1 where a is between 0 and 1; a=0 is the Lasso penalty, a=1 is the ridge penalty. For many correlated predictors, a=.95 or thereabouts improves the performance of the lasso.
* convenient predict, plot, print, and coef methods
* variable-wise penalty modulation allows each variable to be penalized by a scalable amount; if zero that variable always enters * glmnet uses a symmetric parametrization for multinomial, with constraints enforced by the penalization.

Other families such as poisson might appear in later versions of glmnet.

Examples of glmnet speed trials:

Newsgroup data: N=11,000, p=4 Million, two class logistic. 100 values along lasso path. Time = 2mins 14 Class cancer data: N=144, p=16K, 14 class multinomial, 100 values along lasso path. Time = 30secs

Authors: Jerome Friedman, Trevor Hastie, Rob Tibshirani.

See our paper http://www-stat.stanford.edu/~hastie/Papers/glmnet.pdf for implementation details,
and comparisons with other related software.

--
--------------------------------------------------------------------
 Trevor Hastie                                  [EMAIL PROTECTED]
 Professor & Chair, Department of Statistics, Stanford University
 Phone: (650) 725-2231 (Statistics)              Fax: (650) 725-8977
         (650) 498-5233 (Biostatistics)          Fax: (650) 725-6951
 URL: http://www-stat.stanford.edu/~hastie
 address: room 104, Department of Statistics, Sequoia Hall
                  390 Serra Mall, Stanford University, CA 94305-4065

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