<div><p>In this article, we propose a majorization–minimization (MM) algorithm for high-dimensional fused lasso regression (FLR) suitable for parallelization using graphics processing units (GPUs). The MM algorithm is stable and flexible as it can solve the FLR problems with various types of design matrices and penalty structures within a few tens of iterations. We also show that the convergence of the proposed algorithm is guaranteed. We conduct numerical studies to compare our algorithm with other existing algorithms, demonstrating that the proposed MM algorithm is competitive in many settings including the two-dimensional FLR with arbitrary design matrices. The merit of GPU parallelization is also exhibited. Supplementary materials are a...
The computation of the maximum likelihood (ML) estimator for heteroscedastic regression models is co...
Unlike traditional LASSO enforcing sparsity on the variables, Generalized LASSO (GL) enforces sparsi...
<p>In this article, we present a fast and stable algorithm for solving a class of optimization probl...
<p>We present a massively parallel algorithm for the fused lasso, powered by a multiple number of gr...
We describe an efficient Bayesian parallel GPU implementation of two classic statistical models-the ...
Generalized Fused Lasso (GFL) penalizes variables with L1 norms both on the variables and their pair...
Generalized fused lasso (GFL) penalizes variables with L1 norms based both on the variables and thei...
Generalized fused lasso (GFL) penalizes variables with l(1) norms based both on the variables and th...
This paper concerns a class of group-lasso learning problems where the objective function is the sum...
Item does not contain fulltextThis paper presents an efficient algorithm based on the combination of...
We present an approach to computing high-breakdown regression estimators in parallel on graphics pro...
Existing video concept detectors are generally built upon the kernel based machine learning techniqu...
Existing video concept detectors are generally built upon the kernel based machine learning techniqu...
In the era of big data, much of the data is susceptible to noise with heavy-tailed distribution. Fus...
In this paper, we focus on the estimation of a high-dimensional precision matrix. We propose a simpl...
The computation of the maximum likelihood (ML) estimator for heteroscedastic regression models is co...
Unlike traditional LASSO enforcing sparsity on the variables, Generalized LASSO (GL) enforces sparsi...
<p>In this article, we present a fast and stable algorithm for solving a class of optimization probl...
<p>We present a massively parallel algorithm for the fused lasso, powered by a multiple number of gr...
We describe an efficient Bayesian parallel GPU implementation of two classic statistical models-the ...
Generalized Fused Lasso (GFL) penalizes variables with L1 norms both on the variables and their pair...
Generalized fused lasso (GFL) penalizes variables with L1 norms based both on the variables and thei...
Generalized fused lasso (GFL) penalizes variables with l(1) norms based both on the variables and th...
This paper concerns a class of group-lasso learning problems where the objective function is the sum...
Item does not contain fulltextThis paper presents an efficient algorithm based on the combination of...
We present an approach to computing high-breakdown regression estimators in parallel on graphics pro...
Existing video concept detectors are generally built upon the kernel based machine learning techniqu...
Existing video concept detectors are generally built upon the kernel based machine learning techniqu...
In the era of big data, much of the data is susceptible to noise with heavy-tailed distribution. Fus...
In this paper, we focus on the estimation of a high-dimensional precision matrix. We propose a simpl...
The computation of the maximum likelihood (ML) estimator for heteroscedastic regression models is co...
Unlike traditional LASSO enforcing sparsity on the variables, Generalized LASSO (GL) enforces sparsi...
<p>In this article, we present a fast and stable algorithm for solving a class of optimization probl...