Build a hybrid recommender system with improved accuracy

 
PIIS000233880003496-4-1
DOI10.31857/S000233880003496-4
Publication type Article
Status Published
Authors
Affiliation: FIZ IU RAS
Address: Russian Federation
Affiliation: FIZ IU RAS
Address: Russian Federation
Affiliation: FIZ IU RAS
Address: Russian Federation
Affiliation: FIZ IU RAS
Address: Russian Federation
Journal nameIzvestiia Rossiiskoi akademii nauk. Teoriia i sistemy upravleniia
EditionIssue 6
Pages101-107
Abstract

  

Keywords
AcknowledgmentThis work was supported by the Russian Foundation for Basic Research (Grant No. 18-31-00458).
Received09.01.2019
Publication date09.01.2019
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