Low-rank matrix approximation with weights or missing data is NP-hard
| Year of publication: |
2010-11-01
|
|---|---|
| Authors: | GILLIS, Nicolas ; GLINEUR, François |
| Institutions: | Center for Operations Research and Econometrics (CORE), École des Sciences Économiques de Louvain |
| Subject: | low-rank matrix approximation | weighted low-rank approximation | missing data | matrix completion with noise | PCA with missing data | computational complexity | maximum-edge biclique problem |
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