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Berikov, 2019 - Google Patents

Semi-supervised classification using multiple clustering and low-rank matrix operations

Berikov, 2019

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Document ID
7883912333751783239
Author
Berikov V
Publication year
Publication venue
Mathematical Optimization Theory and Operations Research: 18th International Conference, MOTOR 2019, Ekaterinburg, Russia, July 8-12, 2019, Proceedings 18

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Snippet

This paper proposes a semi-supervised classification method which combines machine learning regularization framework and cluster ensemble approach. We use the low-rank decomposition of the co-association matrix of the ensemble to significantly speed up …
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