Communication-Efficient Distributed Optimization using an Approximate Newton-type Method 论文
2014引用 349
Stochastic Gradient Optimization TechniquesSparse and Compressive Sensing TechniquesAdvanced Bandit Algorithms Research
摘要
We present a novel Newton-type method for dis-tributed optimization, which is particularly well suited for stochastic optimization and learning problems. For quadratic objectives, the method enjoys a linear rate of convergence which prov-ably improves with the data size, requiring an essentially constant number of iterations under reasonable assumptions. We provide theoretical and empirical evidence of the advantages of our method compared to other approaches, such as one-shot parameter averaging and ADMM. 1.