<p>We present a massively parallel algorithm for the fused lasso, powered by a multiple number of graphics processing units (GPUs). Our method is suitable for a class of large-scale sparse regression problems on which a two-dimensional lattice structure among the coefficients is imposed. This structure is important in many statistical applications, including image-based regression in which a set of images are used to locate image regions predictive of a response variable such as human behavior. Such large datasets are increasingly common. In our study, we employ the split Bregman method and the fast Fourier transform, which jointly have a high data-level parallelism that is distinct in a two-dimensional setting. Our multi-GPU parallelizatio...
Generalized fused lasso (GFL) penalizes variables with L1 norms based both on the variables and thei...
This article presents parallel algorithms for component decomposition of graph structures on general...
© 2016, The Author(s). Frank–Wolfe (FW) algorithms have been often proposed over the last few years ...
<div><p>In this article, we propose a majorization–minimization (MM) algorithm for high-dimensional ...
We describe an efficient Bayesian parallel GPU implementation of two classic statistical models-the ...
For many finite element problems, when represented as sparse matrices, iterative solvers are found t...
Generalized fused lasso (GFL) penalizes variables with l(1) norms based both on the variables and th...
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...
Many important problems in science and engineering today deal with sparse data. Examples of sparse d...
We present a novel binary convex reformulation of the sparse regression problem that constitutes a n...
International audienceIn high dimensional settings, sparse structures are crucial for efficiency, bo...
Generalized Fused Lasso (GFL) penalizes variables with L1 norms both on the variables and their pair...
Li, XiaomingGenerating high performance Fast Fourier Transform (FFT) library is an important researc...
Extended version of EuroGPU symposium article, in the International Conference on Parallel Computing...
Generalized fused lasso (GFL) penalizes variables with L1 norms based both on the variables and thei...
This article presents parallel algorithms for component decomposition of graph structures on general...
© 2016, The Author(s). Frank–Wolfe (FW) algorithms have been often proposed over the last few years ...
<div><p>In this article, we propose a majorization–minimization (MM) algorithm for high-dimensional ...
We describe an efficient Bayesian parallel GPU implementation of two classic statistical models-the ...
For many finite element problems, when represented as sparse matrices, iterative solvers are found t...
Generalized fused lasso (GFL) penalizes variables with l(1) norms based both on the variables and th...
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...
Many important problems in science and engineering today deal with sparse data. Examples of sparse d...
We present a novel binary convex reformulation of the sparse regression problem that constitutes a n...
International audienceIn high dimensional settings, sparse structures are crucial for efficiency, bo...
Generalized Fused Lasso (GFL) penalizes variables with L1 norms both on the variables and their pair...
Li, XiaomingGenerating high performance Fast Fourier Transform (FFT) library is an important researc...
Extended version of EuroGPU symposium article, in the International Conference on Parallel Computing...
Generalized fused lasso (GFL) penalizes variables with L1 norms based both on the variables and thei...
This article presents parallel algorithms for component decomposition of graph structures on general...
© 2016, The Author(s). Frank–Wolfe (FW) algorithms have been often proposed over the last few years ...