Variable selection is fundamental in high-dimensional statistical modeling. Many techniques to select relevant variables in generalized linear models are based on a penalized likelihood approach. In a recent paper, Fan and Lv (2008) proposed a sure independent screening (SIS) method to select relevant variables in a linear regression model defined on a ultrahigh dimensional feature space. Aim of this paper is to define a generalization of the SIS method for generalized linear models based on a differential geometric approach.
Augugliaro, L., Mineo, A. (2009). Applying differential geometric LARS algorithm to ultra-high dimensional feature space. In Actes des 16èmes Recontres de la Société Francophone de Classification : 2-4 septembre, Grenoble, France (pp.201-204).
Applying differential geometric LARS algorithm to ultra-high dimensional feature space
AUGUGLIARO, Luigi;MINEO, Angelo
2009-01-01
Abstract
Variable selection is fundamental in high-dimensional statistical modeling. Many techniques to select relevant variables in generalized linear models are based on a penalized likelihood approach. In a recent paper, Fan and Lv (2008) proposed a sure independent screening (SIS) method to select relevant variables in a linear regression model defined on a ultrahigh dimensional feature space. Aim of this paper is to define a generalization of the SIS method for generalized linear models based on a differential geometric approach.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.