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Algebra / Mathematics / Dimension reduction / Linear algebra / Numerical linear algebra / Mathematical optimization / Matrix theory / Singular spectrum analysis / Principal component analysis / Singular value decomposition / Compressed sensing / Low-rank approximation
Date: 2018-04-27 18:37:36
Algebra
Mathematics
Dimension reduction
Linear algebra
Numerical linear algebra
Mathematical optimization
Matrix theory
Singular spectrum analysis
Principal component analysis
Singular value decomposition
Compressed sensing
Low-rank approximation

Data Loss and Reconstruction in Sensor Networks

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