This paper describes a general purpose method for solving convex optimization problems in a distributed computing environment. In particular, if the problem data includes a large linear operator or matrix A, the method allows for handling each sub-block of A on a separate machine. The approach works as follows. First, we define a canonical problem form called graph form, in which we have two sets of variables related by a linear operator A, such that the objective function is separable across these two sets of variables. Many types of problems are easily expressed in graph form, including cone programs and a wide variety of regularized loss minimization problems from statistics, like logistic regression, the support vector machine, and the ...
In this paper we consider a general problem set-up for a wide class of convex and robust distributed...
Following their conception in the mid twentieth century, the world of computers has evolved from a l...
In this paper we consider a novel partition-based framework for distributed optimization in peer-to-...
Many problems of recent interest in statistics and machine learning can be posed in the framework of...
Machine learning and statistics with very large datasets is now a topic of widespread interest, both...
We propose two algorithms based on the Primal-Dual Method of Multipliers (PDMM) to be used in distri...
This paper introduces a novel distributed algorithm over static directed graphs for solving big data...
© 2015 IEEE. We propose two algorithms based on the Primal-Dual Method of Multipliers (PDMM) to be u...
Abstract We propose a novel distributed method for convex optimization problems with a certain separ...
Several important applications in machine learning, data mining, signal and image processing can be ...
We study a class of distributed optimization problems of minimizing the sum of potentially non-diffe...
Distributed and parallel algorithms have been frequently investigated in the recent years, in partic...
We design and analyze a fully distributed algorithm for convex constrained optimization in networks ...
This paper proposes TriPD, a new primal-dual algorithm for minimizing the sum of a Lipschitz-differe...
We consider the convex minimization problem with linear constraints and a block-separable objective ...
In this paper we consider a general problem set-up for a wide class of convex and robust distributed...
Following their conception in the mid twentieth century, the world of computers has evolved from a l...
In this paper we consider a novel partition-based framework for distributed optimization in peer-to-...
Many problems of recent interest in statistics and machine learning can be posed in the framework of...
Machine learning and statistics with very large datasets is now a topic of widespread interest, both...
We propose two algorithms based on the Primal-Dual Method of Multipliers (PDMM) to be used in distri...
This paper introduces a novel distributed algorithm over static directed graphs for solving big data...
© 2015 IEEE. We propose two algorithms based on the Primal-Dual Method of Multipliers (PDMM) to be u...
Abstract We propose a novel distributed method for convex optimization problems with a certain separ...
Several important applications in machine learning, data mining, signal and image processing can be ...
We study a class of distributed optimization problems of minimizing the sum of potentially non-diffe...
Distributed and parallel algorithms have been frequently investigated in the recent years, in partic...
We design and analyze a fully distributed algorithm for convex constrained optimization in networks ...
This paper proposes TriPD, a new primal-dual algorithm for minimizing the sum of a Lipschitz-differe...
We consider the convex minimization problem with linear constraints and a block-separable objective ...
In this paper we consider a general problem set-up for a wide class of convex and robust distributed...
Following their conception in the mid twentieth century, the world of computers has evolved from a l...
In this paper we consider a novel partition-based framework for distributed optimization in peer-to-...