Majorization-Minimization Dual Stagewise Algorithm for Generalized Lasso
Jianmin Chen, Kun Chen

TL;DR
The paper introduces the MM-DUST algorithm, a novel dual stagewise method for efficiently computing solution paths in generalized lasso problems, extending applicability to non-Gaussian and non-linear models.
Contribution
It proposes a majorization-minimization dual stagewise algorithm that handles various convex loss functions and improves computational efficiency in large-scale generalized lasso problems.
Findings
Effective in non-Gaussian and non-linear models
Demonstrates computational efficiency and accuracy
Validates through simulations and real data applications
Abstract
The generalized lasso is a natural generalization of the celebrated lasso approach to handle structural regularization problems. Many important methods and applications fall into this framework, including fused lasso, clustered lasso, and constrained lasso. To elevate its effectiveness in large-scale problems, extensive research has been conducted on the computational strategies of generalized lasso. However, to our knowledge, most studies are under the linear setup, with limited advances in non-Gaussian and non-linear models. We propose a majorization-minimization dual stagewise (MM-DUST) algorithm to efficiently trace out the full solution paths of the generalized lasso problem. The majorization technique is incorporated to handle different convex loss functions through their quadratic majorizers. Utilizing the connection between primal and dual problems and the idea of…
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Taxonomy
TopicsStatistical Methods and Inference
MethodsLogistic Regression
