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Recommender systems / Information science / Collective intelligence / Information retrieval / Humancomputer interaction / Collaboration / Information systems / Matrix factorization / Collaborative filtering / GroupLens Research / Non-negative matrix factorization / QJ
Date: 2017-10-04 00:43:03
Recommender systems
Information science
Collective intelligence
Information retrieval
Humancomputer interaction
Collaboration
Information systems
Matrix factorization
Collaborative filtering
GroupLens Research
Non-negative matrix factorization
QJ

Explainable Matrix Factorization for Collaborative Filtering Behnoush Abdollahi Olfa Nasraoui Knowledge Discovery & Web Mining Lab

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Source URL: gdac.uqam.ca

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