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Linear algebra / Abstract algebra / Statistical classification / Matrix theory / Matrices / Support vector machine / Matrix / Kernel method / Linear classifier / Kernel / Euclidean vector / Eigenvalues and eigenvectors
Date: 2013-01-23 02:33:21
Linear algebra
Abstract algebra
Statistical classification
Matrix theory
Matrices
Support vector machine
Matrix
Kernel method
Linear classifier
Kernel
Euclidean vector
Eigenvalues and eigenvectors

Contents 1 Introduction 2 The

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