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Operator theory / Matrix theory / Hilbert space / Abstract algebra / Singular value decomposition / Positive-definite kernel / Projection / Matrix / Eigenvalues and eigenvectors / Algebra / Mathematics / Linear algebra
Date: 2008-09-11 13:00:23
Operator theory
Matrix theory
Hilbert space
Abstract algebra
Singular value decomposition
Positive-definite kernel
Projection
Matrix
Eigenvalues and eigenvectors
Algebra
Mathematics
Linear algebra

Kernel Extrapolation S.V.N. Vishwanathan a Karsten M. Borgwardt b,∗ Omri Guttman a Alex Smola a a Statistical Machine Learning Program, National ICT Australia,

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