Mathematical model of the top-N problem for content recommender systems



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This article discusses content recommender systems which solve the top-N problem. A mathematical model of the content recommender system based on fuzzy sets, the criterion of assessing the quality of recommendations and solution algorithm are presented in the article.

作者简介

S. Amelkin

Aylamazyan Institute of Software Systems of the Russian Academy of Sciences

Email: sergey.a.amelkin@gmail.com
Ph.D.

D. Ponizovkin

Aylamazyan Institute of Software Systems of the Russian Academy of Sciences

Email: denis.ponizovkin@gmail.com

参考

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版权所有 © Amelkin S.A., Ponizovkin D.M., 2013

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