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A Riemannian gossip approach to subspace learning on Grassmann manifold

机译:在格拉斯曼流形上进行子空间学习的黎曼八卦方法

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In this paper, we focus on subspace learning problems on the Grassmann manifold. Interesting applications in this setting include low-rank matrix completion and low-dimensional multivariate regression, among others. Motivated by privacy concerns, we aim to solve such problems in a decentralized setting where multiple agents have access to (and solve) only a part of the whole optimization problem. The agents communicate with each other to arrive at a consensus, i.e., agree on a common quantity, via the gossip protocol. We propose a novel cost function for subspace learning on the Grassmann manifold, which is a weighted sum of several sub-problems (each solved by an agent) and the communication cost among the agents. The cost function has a finite-sum structure. In the proposed modeling approach, different agents learn individual local subspaces but they achieve asymptotic consensus on the global learned subspace. The approach is scalable and parallelizable. Numerical experiments show the efficacy of the proposed decentralized algorithms on various matrix completion and multivariate regression benchmarks.
机译:在本文中,我们将重点放在Grassmann流形上的子空间学习问题上。在这种情况下,有趣的应用包括低秩矩阵完成和低维多元回归等。出于对隐私问题的关注,我们旨在在分散的环境中解决此类问题,在这种环境中,多个代理只能访问(并解决)整个优化问题的一部分。代理通过八卦协议相互通信以达成共识,即达成共识。我们为格拉斯曼流形上的子空间学习提出了一种新颖的成本函数,该函数是几个子问题(每个问题由一个代理解决)与代理之间的通信成本的加权和。成本函数具有有限和结构。在提出的建模方法中,不同的主体学习单个局部子空间,但是它们在全局学习子空间上实现了渐近共识。该方法是可扩展和可并行化的。数值实验表明,所提出的分散算法在各种矩阵完成度和多元回归基准上的功效。

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