Review of the recommender systems application in cardiology

Автор: Kamyshev Konstantin V., Kureichik Viktor M., Borodyanskiy Ilya M.

Журнал: Cardiometry @cardiometry

Рубрика: Review

Статья в выпуске: 16, 2020 года.

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The article provides a review of the recommender systems application in medical field, cardiology, in particular. The concept of recommender systems is defined, the brief history of the recommender systems development is given. The main types of recommender systems and principles of their construction are presented. The advantages and disadvantages of the recommender system methods application in cardiology are identified. Methods for improving the recommender systems are proposed.

Recommender system, filtering, collaborative, content, hybrid, information retrieval, mrs, pehc

Короткий адрес: https://sciup.org/148311468

IDR: 148311468   |   DOI: 10.12710/cardiometry.2020.16.97105

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