* * * Please note the unusual time and place* * *
Seminar Notice
Statistical Laboratory
Iowa State University
DATE AND TIME: Tuesday, January 18, 2005, 11:00 a.m.
PLACE: 115 Davidson
SPEAKER: Hui Zou, Department of Statistics, Stanford University, Stanford,
California
TITLE: Regularization and Variable Selection via the Elastic
Net
ABSTRACT
In the practice of statistical modeling, it is often desirable to have an
accurate predictive model with a sparse representation. The lasso is a promising
model building technique, performing continuous shrinkage and variable selection
simultaneously. Although the lasso has shown success in many situations, it may
produce unsatisfactory results in some scenarios: (1) the number of predictors
(greatly) exceeds the number of observations; (2) the predictors are highly
correlated and form "groups". A typical example is the gene selection problem in
microarray analysis.
We propose the elastic net, a new regularization and variable selection
method. Real world data and a simulation study show that the elastic net often
outperforms the lasso, while enjoying a similar sparsity of representation. In
addition, the elastic net encourages a grouping effect, where strongly
correlated predictors tend to be in or out of the model together. The elastic
net is particularly useful when the number of predictors is much bigger that the
number of samples. We have implemented an algorithm called LARS-EN for
efficiently computing the entire elastic net regularization path, much like the
LARS algorithm does for the lasso. In this talk, I will also describe some
interesting applications of the elastic net in other statistical areas such as
the sparse principal component analysis and the margin-based kernel
classifier.
This is joint work with Trevor Hastie.
COFFEE: 10:40 a.m., 104 Snedecor Hall