作者
Alp Yurtsever, Quoc Tran-Dinh, Volkan Cevher
发表日期
2015
期刊
Advances in Neural Information Processing Systems
卷号
28
简介
We propose a new primal-dual algorithmic framework for a prototypical constrained convex optimization template. The algorithmic instances of our framework are universal since they can automatically adapt to the unknown Holder continuity degree and constant within the dual formulation. They are also guaranteed to have optimal convergence rates in the objective residual and the feasibility gap for each Holder smoothness degree. In contrast to existing primal-dual algorithms, our framework avoids the proximity operator of the objective function. We instead leverage computationally cheaper, Fenchel-type operators, which are the main workhorses of the generalized conditional gradient (GCG)-type methods. In contrast to the GCG-type methods, our framework does not require the objective function to be differentiable, and can also process additional general linear inclusion constraints, while guarantees the convergence rate on the primal problem.
引用总数
2014201520162017201820192020202120222023202414104111078435
学术搜索中的文章
A Yurtsever, Q Tran Dinh, V Cevher - Advances in Neural Information Processing Systems, 2015
A Yurtsever, Q Tran-Dinh, V Cevher - Proceedings of Neural Information Processing Systems, 2015