Development of applied tools for establishing information morphism in the analysis of text documents based on semantic-ontological and graph models
https://doi.org/10.32362/2500-316X-2026-14-3-24-42
EDN: BMHCUK
Abstract
Objectives. The work considers whether a semantic-ontological model for scientific text analysis can support practical tools for establishing information morphism. Using VAK6 specialty passports as the textual ontological basis, we propose a graph-based model that reconstructs a proximity profile to specialty codes from an article or dissertation abstract to map the document space to the passport space.
Methods. Processing the passports as a single corpus, a shared unigram and bigram vocabulary is constructed from their chunks. Term frequency is computed in the form of inverse document frequency (TF-IDF) representations to construct local semantic graphs on the basis of incremental construction of an associative network (ICAN). For each document passport pair, similarity measures are merged into a hybrid metric by aggregation within lexical and semantic layers. Scores are converted into a probability distribution via codes based on temperature softmax functions. The model is evaluated on a corpus of dissertation abstracts and a corpus of articles of VAK list journals7, and the results are compared with large language models.
Results. The hybrid scheme, which achieves average top 1 accuracy of about 0.69 and top 3 of about 0.90 on abstracts, reaches 0.91 and 0.93 on articles to outperform lexical-only and semantic-only variants. Considered relative to large language models, the hybrid scheme achieves superior top 1 accuracy for articles and comparable accuracy in top 3, while remaining interpretable through n grams and contextual passport graphs.
Conclusions. The proposed model, which uses VAK passports to provide a practical ontological foundation, represents an interpretable and computationally efficient alternative for code selection and thematic profiling that accounts for interdisciplinarity.
About the Authors
N. S. KurdyukovRussian Federation
Nikita S. Kurdyukov, Postgraduate Student, Department of Instrumental and Applied Software, Institute of Information Technologies
78, Vernadskogo pr., Moscow, 119454
Competing Interests:
The authors declare no conflicts of interest.
V. N. Kalinin
Russian Federation
Vladimir N. Kalinin, Assistant, Department of Telecommunications, Institute of Radio Electronics and Informatics
Scopus Author ID: 57562579000
78, Vernadskogo pr., Moscow, 119454
Competing Interests:
The authors declare no conflicts of interest.
S. A. Kudzh
Russian Federation
Stanislav A. Kudzh, Dr. Sci. (Eng.), Professor, Department of Instrumental and Applied Software, Institute of Information Technologies
Scopus Author ID 56521711400, ResearcherID AAG-1319-2019
78, Vernadskogo pr., Moscow, 119454
Competing Interests:
The authors declare no conflicts of interest.
D. O. Zhukov
Russian Federation
Dmitry O. Zhukov, Dr. Sci. (Eng.), Professor, Department of Telecommunications, Institute of Radio Electronics and Informatics
Scopus Author ID 57189660218
78, Vernadskogo pr., Moscow, 119454
Competing Interests:
The authors declare no conflicts of interest.
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Supplementary files
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1. Distribution of the number of chunks of scientific specialties by passports | |
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| Type | Исследовательские инструменты | |
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Indexing metadata ▾ | |
- A semantic-ontological model for scientific text analysis that can support practical tools for establishing information morphism was developed.
- By using VAK specialty passports as the textual ontological basis, it was proposed a graph-based model that reconstructs a proximity profile to specialty codes from an article or dissertation abstract to map the document space to the passport space.
Review
For citations:
Kurdyukov N.S., Kalinin V.N., Kudzh S.A., Zhukov D.O. Development of applied tools for establishing information morphism in the analysis of text documents based on semantic-ontological and graph models. Russian Technological Journal. 2026;14(3):24-42. https://doi.org/10.32362/2500-316X-2026-14-3-24-42. EDN: BMHCUK
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