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Local Convergence of an Algorithm for Subspace Identification from Partial Data

机译:一种局部数据子空间识别算法的局部收敛性

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Grassmannian rank-one update subspace estimation (GROUSE) is an iterative algorithm for identifying a linear subspace of from data consisting of partial observations of random vectors from that subspace. This paper examines local convergence properties of GROUSE, under assumptions on the randomness of the observed vectors, the randomness of the subset of elements observed at each iteration, and incoherence of the subspace with the coordinate directions. Convergence at an expected linear rate is demonstrated under certain assumptions. The case in which the full random vector is revealed at each iteration allows for much simpler analysis and is also described. GROUSE is related to incremental SVD methods and to gradient projection algorithms in optimization.
机译:格拉斯曼等级更新子空间估计(GROUSE)是一种迭代算法,用于从数据的线性子空间中识别出线性子空间,该数据由对该子空间的随机向量的部分观察组成。本文在观察矢量的随机性,每次迭代观察到的元素子集的随机性以及子空间与坐标方向的不相干性的假设下,检验了GROUSE的局部收敛性。在某些假设下证明了以预期的线性速率收敛。在每次迭代中显示完整随机向量的情况允许进行简单得多的分析,并对此进行了描述。 GROUSE与增量SVD方法以及优化中的梯度投影算法有关。

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