sodavis - SODA: Main and Interaction Effects Selection for Logistic
Regression, Quadratic Discriminant and General Index Models
Variable and interaction selection are essential to
classification in high-dimensional setting. In this package, we
provide the implementation of SODA procedure, which is a
forward-backward algorithm that selects both main and
interaction effects under logistic regression and quadratic
discriminant analysis. We also provide an extension, S-SODA,
for dealing with the variable selection problem for
semi-parametric models with continuous responses.