High-Dimensional Longitudinal Classification with the Multinomial Fused Lasso

01/29/2015
by   Samrachana Adhikari, et al.
0

We study regularized estimation in high-dimensional longitudinal classification problems, using the lasso and fused lasso regularizers. The constructed coefficient estimates are piecewise constant across the time dimension in the longitudinal problem, with adaptively selected change points (break points). We present an efficient algorithm for computing such estimates, based on proximal gradient descent. We apply our proposed technique to a longitudinal data set on Alzheimer's disease from the Cardiovascular Health Study Cognition Study, and use this data set to motivate and demonstrate several practical considerations such as the selection of tuning parameters, and the assessment of model stability.

READ FULL TEXT
research
10/27/2021

Denoising and change point localisation in piecewise-constant high-dimensional regression coefficients

We study the theoretical properties of the fused lasso procedure origina...
research
01/15/2018

On the Complexity of the Weighted Fused Lasso

The solution path of the 1D fused lasso for an n-dimensional input is pi...
research
06/21/2011

The group fused Lasso for multiple change-point detection

We present the group fused Lasso for detection of multiple change-points...
research
04/02/2014

Don't Fall for Tuning Parameters: Tuning-Free Variable Selection in High Dimensions With the TREX

Lasso is a seminal contribution to high-dimensional statistics, but it h...
research
12/21/2021

Group Lasso merger for sparse prediction with high-dimensional categorical data

Sparse prediction with categorical data is challenging even for a modera...
research
06/14/2022

Graph-Based Spatial Segmentation of Health-Related Areal Data

Smoothing is often used to improve the readability and interpretability ...
research
08/16/2007

Piecewise linear regularized solution paths

We consider the generic regularized optimization problem β̂(λ)=_βL(y,Xβ)...

Please sign up or login with your details

Forgot password? Click here to reset