Recursive Sentiment Detection Algorithm for Russian Sentences
https://doi.org/10.18255/1818-1015-2022-2-134-147
Abstract
About the Authors
Anatoliy Y. PoletaevRussian Federation
Ilya V. Paramonov
Russian Federation
References
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Review
For citations:
Poletaev A.Y., Paramonov I.V. Recursive Sentiment Detection Algorithm for Russian Sentences. Modeling and Analysis of Information Systems. 2022;29(2):134-147. (In Russ.) https://doi.org/10.18255/1818-1015-2022-2-134-147