Accelerated, Parallel, and Proximal Coordinate Descent 论文

2015SIAM Journal on Optimization引用 275
Stochastic Gradient Optimization TechniquesSparse and Compressive Sensing TechniquesMarkov Chains and Monte Carlo Methods

详细信息

发表期刊/会议
SIAM Journal on Optimization
发表日期
2015-01-01
发表年份
2015

关键词

Stochastic Gradient Optimization TechniquesSparse and Compressive Sensing TechniquesMarkov Chains and Monte Carlo Methods

摘要

We propose a new randomized coordinate descent method for minimizing the sum of convex functions each of which depends on a small number of coordinates only. Our method (APPROX) is simultaneously Accelerated, Parallel, and PROXimal; this is the first time such a method is proposed. In the special case when the number of processors is equal to the number of coordinates, the method converges at the rate $2\bar{\omega}\bar{L} R^2/(k+1)^2 $, where $k$ is the iteration counter, $\bar{\omega}$ is a data-weighted average degree of separability of the loss function, $\bar{L}$ is the average of Lipschitz constants associated with the coordinates and individual functions in the sum, and $R$ is the distance of the initial point from the minimizer. We show that the method can be implemented without the need to perform full-dimensional vector operations, which is the major bottleneck of accelerated coordinate descent. The fact that the method depends on the average degree of separability, and not on the maximum degree, can be attributed to the use of new safe large stepsizes, leading to improved expected separable overapproximation (ESO). These are of independent interest and can be utilized in all existing parallel randomized coordinate descent algorithms based on the concept of ESO. In special cases, our method recovers several classical and recent algorithms such as simple and accelerated proximal gradient descent, as well serial, parallel, and distributed versions of randomized block coordinate descent. Our bounds match or improve on the best known bounds for these methods.