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June 25, 2026
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Chemists from HSE University have discovered a way to carry out a reductive addition reaction without using an external reducing agent. Instead, the required 'resource' is supplied by the aldehyde itself, one of the reaction participants. This approach helps prevent unwanted side reactions, reduces toxicity, and simplifies the production and synthesis of organic molecules, including those used in the manufacture of medicines. The study has been published in Journal of Catalysis.
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Context-Aware Recommender System Based on Boolean Matrix Factorisation

P. 99–110.
Ignatov D. I., Ахматнуров М.

In this work we propose and study an approach for collaborative filtering, which is based on Boolean matrix factorisation and exploits additional (context) information about users and items. To avoid similarity loss in case of Boolean representation we use an adjusted type of projection of a target user to the obtained factor space. We have compared the proposed method with SVD-based approach on the MovieLens dataset. The experiments demonstrate that the proposed method has better MAE and Precision and comparable Recall and F-measure. We also report an increase of quality in the context information presence.

Language: English
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Keywords: рекомендательные системырекомендательные системы и алгоритмыBoolean Matrix Factorisationбулева матричная факторизацияRecommender Systems
Publication based on the results of:
­­­Data mining based on lattices of closed descriptions and applied ontologies (2015)

In book

Proceedings of the Twelfth International Conference on Concept Lattices and Their Applications Clermont-Ferrand, France, October 13-16, 2015
Vol. 1466. , Clermont-Ferrand: CEUR Workshop Proceedings, 2015.
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