Deep Collective Matrix Factorization for Augmented Multi-View Learning

28 Nov 2018Ragunathan MariappanVaibhav Rajan

Learning by integrating multiple heterogeneous data sources is a common requirement in many tasks. Collective Matrix Factorization (CMF) is a technique to learn shared latent representations from arbitrary collections of matrices... (read more)

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