Least Angle Regression software: LARS "Least Angle Regression" ("LAR") is a new model selection algorithm; a useful and less greedy version of traditional forward selection methods. LAR is described in detail in a paper by Brad Efron, Trevor Hastie, Iain Johnstone and Rob Tibshirani, soon to appear in the Annals of Statistics. The paper, as well as R and Splus packages, are available at http://www-stat.stanford.edu/~hastie/Papers#LARS A simple modification of the LAR algorithm implements Tibshirani's Lasso, an attractive version of OLS that constrains the sum of the absolute regression coefficients; the Lasso modification of the LARS software calculates the entire Lasso path of coefficients for a given problem at the cost of a single least squares fit. A different LARS modification efficiently implements epsilon Forward Stagewise linear regression, another promising new model selection method closely related to Boosting. The packages for R have also been submitted to CRAN -------------------------------------------------------------------- Trevor Hastie hastie@stanford.edu Professor, 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 -------------------------------------------------------------------- [[alternate HTML version deleted]]