ROP: Matrix Recovery via Rank-One Projections
Tony Cai and Anru Zhang
The main results obtained in the paper also have implications to other related statistical problems. An application to estimation of spike covariance matrices from one-dimensional random projections is considered. The results demonstrate that it is possible to accurately estimate the covariance matrix of a high-dimensional distribution based only on one-dimensional projections.
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