Deterministic Symmetric Positive Semidefinite Matrix Completion
Abstract
We consider the problem of recovering a symmetric, positive semidefinite (SPSD) matrix from a subset of its entries, possibly corrupted by noise. In contrast to previous matrix recovery work, we drop the assumption of a random sampling of entries in favor of a deterministic sampling of principal submatrices of the matrix. We develop a set of sufficient conditions for the recovery of a SPSD matrix from a set of its principal submatrices, present necessity results based on this set of conditions and develop an algorithm that can exactly recover a matrix when these conditions are met. The proposed algorithm is naturally generalized to the problem of noisy matrix recovery, and we provide a worst-case bound on reconstruction error for this scenario. Finally, we demonstrate the algorithm's utility on noiseless and noisy simulated datasets.
Cite
Text
Bishop and Yu. "Deterministic Symmetric Positive Semidefinite Matrix Completion." Neural Information Processing Systems, 2014.Markdown
[Bishop and Yu. "Deterministic Symmetric Positive Semidefinite Matrix Completion." Neural Information Processing Systems, 2014.](https://mlanthology.org/neurips/2014/bishop2014neurips-deterministic/)BibTeX
@inproceedings{bishop2014neurips-deterministic,
title = {{Deterministic Symmetric Positive Semidefinite Matrix Completion}},
author = {Bishop, William E and Yu, Byron M.},
booktitle = {Neural Information Processing Systems},
year = {2014},
pages = {2762-2770},
url = {https://mlanthology.org/neurips/2014/bishop2014neurips-deterministic/}
}