Methods for Extracting Emotional Assessment from Natural Language Texts based on Semantic Technologies and Deep Learning Full article
| Journal |
Программная инженерия
ISSN: 2220-3397 |
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| Output data | Year: 2026, Volume: 17, Number: 4, Pages: 179-190 Pages count : 12 DOI: 10.17587/prin.17.179-190 | ||||
| Tags | sentiment analysis, emotion recognition, natural language processing, deep learning, ontological model, partial model, atomic diagram | ||||
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Funding (1)
| 1 | Sobolev Institute of Mathematics | FWNF-2022-0011 |
Abstract:
Growing volume of text information in natural language these days makes it necessary to develop some valid emotional content analysis these days. The article suggests some methods of emotion recognition in the situations introduced in the Russian texts samples. Methods of identification and representation of emotion occurrence through atomic diagrams of partial models are also given in the article. Some program units for the Logic Text software system are created to reveal and analyse the emotional evaluation. And to formalise emotionally colored situations we use evaluating partial models. Neural networks are used to recognise emotions. Causal relationships algorithm is based on dividing sentences into predicates and situations with the help of Logic Text softwear system.
Cite:
Palchunov D.E.
, Mironov V.S.
Methods for Extracting Emotional Assessment from Natural Language Texts based on Semantic Technologies and Deep Learning
Программная инженерия. 2026. V.17. N4. P.179-190. DOI: 10.17587/prin.17.179-190 РИНЦ OpenAlex
Methods for Extracting Emotional Assessment from Natural Language Texts based on Semantic Technologies and Deep Learning
Программная инженерия. 2026. V.17. N4. P.179-190. DOI: 10.17587/prin.17.179-190 РИНЦ OpenAlex
Dates:
| Submitted: | Oct 21, 2025 |
| Accepted: | Nov 21, 2025 |
| Published print: | Apr 7, 2026 |
| Published online: | Apr 7, 2026 |
Identifiers:
| ≡ Elibrary: | 89185768 |
| ≡ OpenAlex: | W7152508286 |