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Matrix approximation under local low-rank assumption
Joonseok Lee
, Seungyeon Kim
, Guy Lebanon
, Yoram Singer
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peer-review
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Dive into the research topics of 'Matrix approximation under local low-rank assumption'. Together they form a unique fingerprint.
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Keyphrases
Local Low-rank
100%
Matrix Approximation
100%
Prediction Accuracy
50%
Low-rank
50%
Machine Learning
25%
Prediction Model
25%
Weighted Sums
25%
Approximate Model
25%
New Matrix
25%
Computer Vision
25%
Low-rank Matrix
25%
Partially Observed
25%
Recommendation System
25%
Low-rank Modeling
25%
Recommendation Tasks
25%
Text Mining
25%
Mathematics
Matrix (Mathematics)
100%
Approximated Matrix
100%
Weighted Sum
25%
Accurate Prediction
25%
Computer Science
Approximated Matrix
100%
Machine Learning
25%
Prediction Model
25%
Prediction Accuracy
25%
Computer Vision
25%
Text Mining
25%