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  • title: Rate-Optimal Subspace Estimation on Random Graphs
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            Rate-Optimal Subspace Estimation on Random Graphs
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            Rate-Optimal Subspace Estimation on Random Graphs

            Dez 6, 2021

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            Zhixin Zhou

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            FZ

            Fan Zhou

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            PL

            Ping Li

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            Über

            We study the theory of random bipartite graph whose adjacency matrix is generated according to a connectivity matrix M. We consider the bipartite graph to be sparse, i.e., the entries of M are upper bounded by certain sparsity parameter. We show that the performance of estimating the connectivity matrix M depends on the sparsity of the graph. We focus on two measurement of performance of estimation: the error of estimating M and the error of estimating the column space of M. In the first case, w…

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            NeurIPS 2021

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