This work develops a provably accurate fully-decentralized alternating projected gradient descent (GD) algorithm for recovering a low rank (LR) matrix from mutually independent projections of each of its columns, in a fast and communication-efficient fashion. To our best knowledge, this work is the first attempt to develop a provably correct decentralized algorithm (i) for any problem involving the use of an alternating projected GD algorithm; (ii) and for any problem in which the constraint set to be projected to is a non-convex set.
翻译:本研究提出一种可证明精确的完全去中心化交替投影梯度下降算法,用于从各列的相互独立投影中快速且通信高效地恢复低秩矩阵。据我们所知,本工作是首次尝试开发具有可证明正确性的去中心化算法,该算法(i)适用于任何涉及交替投影梯度下降算法的问题;(ii)适用于任何投影约束集为非凸集的问题。