In this paper, we focus on the decentralized optimization problem over the Stiefel manifold, which is defined on a connected network of $d$ agents. The objective is an average of $d$ local functions, and each function is privately held by an agent and encodes its data. The agents can only communicate with their neighbors in a collaborative effort to solve this problem. In existing methods, multiple rounds of communications are required to guarantee the convergence, giving rise to high communication costs. In contrast, this paper proposes a decentralized algorithm, called DESTINY, which only invokes a single round of communications per iteration. DESTINY combines gradient tracking techniques with a novel approximate augmented Lagrangian function. The global convergence to stationary points is rigorously established. Comprehensive numerical experiments demonstrate that DESTINY has a strong potential to deliver a cutting-edge performance in solving a variety of testing problems.
翻译:在本文中,我们侧重于Stiefel 元件的分散优化问题,该元件是在一个由美元代理商组成的连通网络上定义的。目标是平均为美元当地功能,每个功能由代理商私人持有,并编码其数据。代理商只能与邻国合作解决这一问题。在现行方法中,需要多轮通信才能保证趋同,从而产生高昂的通信费用。与此相反,本文件建议采用一种分散算法,称为DESTINY,它只采用每转一次的单轮通信。DESTINY将梯度跟踪技术与一种新颖的近似增强Lagrangian功能相结合。全球与固定点的趋同得到了严格确立。综合数字实验表明,DESTINY在解决各种测试问题方面有着巨大的潜力。