A lasso for hierarchical interactions

05/22/2012
by   Jacob Bien, et al.
0

We add a set of convex constraints to the lasso to produce sparse interaction models that honor the hierarchy restriction that an interaction only be included in a model if one or both variables are marginally important. We give a precise characterization of the effect of this hierarchy constraint, prove that hierarchy holds with probability one and derive an unbiased estimate for the degrees of freedom of our estimator. A bound on this estimate reveals the amount of fitting "saved" by the hierarchy constraint. We distinguish between parameter sparsity - the number of nonzero coefficients - and practical sparsity - the number of raw variables one must measure to make a new prediction. Hierarchy focuses on the latter, which is more closely tied to important data collection concerns such as cost, time and effort. We develop an algorithm, available in the R package hierNet, and perform an empirical study of our method.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
11/08/2019

Degrees of freedom for off-the-grid sparse estimation

A central question in modern machine learning and imaging sciences is to...
research
08/25/2023

Degrees of Freedom: Search Cost and Self-consistency

Model degrees of freedom () is a fundamental concept in statistics becau...
research
10/18/2022

Fused Lasso Nearly Isotonic Signal Approximation in General Dimensions

In this paper we introduce and study fused lasso nearly-isotonic signal ...
research
12/01/2017

A Pliable Lasso

We propose a generalization of the lasso that allows the model coefficie...
research
01/21/2020

Lasso for hierarchical polynomial models

In a polynomial regression model, the divisibility conditions implicit i...
research
10/13/2014

Convex Modeling of Interactions with Strong Heredity

We consider the task of fitting a regression model involving interaction...
research
12/05/2015

Hierarchical Sparse Modeling: A Choice of Two Group Lasso Formulations

Demanding sparsity in estimated models has become a routine practice in ...

Please sign up or login with your details

Forgot password? Click here to reset