Stability Selection for Structured Variable Selection

12/13/2017
by   George Philipp, et al.
0

In variable or graph selection problems, finding a right-sized model or controlling the number of false positives is notoriously difficult. Recently, a meta-algorithm called Stability Selection was proposed that can provide reliable finite-sample control of the number of false positives. Its benefits were demonstrated when used in conjunction with the lasso and orthogonal matching pursuit algorithms. In this paper, we investigate the applicability of stability selection to structured selection algorithms: the group lasso and the structured input-output lasso. We find that using stability selection often increases the power of both algorithms, but that the presence of complex structure reduces the reliability of error control under stability selection. We give strategies for setting tuning parameters to obtain a good model size under stability selection, and highlight its strengths and weaknesses compared to competing methods screen and clean and cross-validation. We give guidelines about when to use which error control method.

READ FULL TEXT
research
11/05/2014

Controlling false discoveries in high-dimensional situations: Boosting with stability selection

Modern biotechnologies often result in high-dimensional data sets with m...
research
01/30/2013

A note on selection stability: combining stability and prediction

Recently, many regularized procedures have been proposed for variable se...
research
06/24/2023

Information criteria for structured parameter selection in high dimensional tree and graph models

Parameter selection in high-dimensional models is typically finetuned in...
research
05/25/2021

Kernel Knockoffs Selection for Nonparametric Additive Models

Thanks to its fine balance between model flexibility and interpretabilit...
research
06/04/2018

Post model-fitting exploration via a "Next-Door" analysis

We propose a simple method for evaluating the model that has been chosen...
research
10/17/2014

Randomized Structural Sparsity via Constrained Block Subsampling for Improved Sensitivity of Discriminative Voxel Identification

In this paper, we consider voxel selection for functional Magnetic Reson...
research
02/10/2022

Loss-guided Stability Selection

In modern data analysis, sparse model selection becomes inevitable once ...

Please sign up or login with your details

Forgot password? Click here to reset