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Linear algebra / Matrix theory / Multivariate statistics / Recommender systems / Collaboration / Matrix / Singular value decomposition / Factor analysis / Collaborative filtering / Eigenvalues and eigenvectors / Protein domain / Factorization
Date: 2014-07-21 08:47:06
Linear algebra
Matrix theory
Multivariate statistics
Recommender systems
Collaboration
Matrix
Singular value decomposition
Factor analysis
Collaborative filtering
Eigenvalues and eigenvectors
Protein domain
Factorization

Personalized Recommendation via Cross-Domain Triadic Factorization

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