Preview

Digital Transformation

Advanced search

Intellectual Analysis of Textual Information in Domain Fields in the System of e-Government

https://doi.org/10.38086/2522-9613-2019-2-46-52

Abstract

The given paper considers application of data mining technology in scientific research as one of intellectual analysis methods in the domain field of e-Government. The topicality of the issue is stipulated by the current absence of the researches of the kind in the Republic of Belarus. The paper illustrates how the programme package Rapid Miner and the language R have been applied in text mining. Concept indexing has been admitted as the most resultative form of analyzing domain field ontologies. Formal and linguistic approaches are found most effective in analyzing domain field ontologies. The paper identifies the problems of word redundancy and word polysemy. The prognosis for the further research investigation is in interconnectivity of specialized ontologies studying heterogeneous terms on the basis of artificial intelligence (AI).

About the Author

T. I. Makarevich
Belarusian State University; Academy of Public Administration under the aegis of the President of the Republic of Belaru
Belarus

Master of Philological sciences, Senior Lecturer of the Department of English for Humanities, Faculty of International Relations, BSU;  1st year postgraduate student, specialty “e-Government”

20 Leningradskaya Str., 220030 Minsk;  17 Moskovskaya Str., 220007 Minsk, Republic of Belarus



References

1. Dobrov B. V. Ontologii i tezaurusy: modeli, instrumenty, prilozheniya [Ontologies and Thesauruses: Models, Instruments, Applications]. Мoscow, Binom. Laboratoriya znanij, 2009. 173 p. (in Russian).

2. Makarevich T. I., Makarevich I. I. English for ICT Students: textbook: in 2 parts. Minsk: Academy of Public Administration under the aegis of the President of the Republic of Belarus, 2012. 382 p.

3. Piatetsky-Shapiro G., Frawley W. Knowledge Discovery in Databases. NY: AAAI/MIT Press, 1991. 168 p.

4. Lande D. V. An Approach to Creating Terminological Ontologies. Ontologiya proektirovaniya [Ontology Project Development], 2014, № 2(12), pp. 83–91 (in Russian).

5. Hofmann M., Klinkenberg R. RapidMiner: Data Mining Use Cases and Business Analytics Applications. Chapman & Hall/CRC Data Mining and Knowledge Discovery Series. 1st ed, 2013. 525 p.

6. Tezaurus informatsionno-poiskovyi odnoyazychnyi: Pravila razrabotki: sruktura, sostav I forma predstavleniya // GOST 7.25.- 2001. Sistema standartov po informatsii, bibliotechomu i izdatelskomu delu [Thesaurus Information-Retrieval Monolingual: Rules for Development: Structure, Content and Display Format // GOST 7.25.-2001. System of Standards in Information, Bibliography and Publishing]. Minsk, CIS Council for Standardization, Metrology and Certification Intergovernmental, 2001 (in Russian).

7. Guarino N., Giaretta P. Ontologies and Knowledge Bases: Towards a Terminological Clarification. Towards Very Large Knowledge Bases: Knowledge Building and Knowledge Sharing. Amsterdam, IOS Press, 1995, pp. 57–70.

8. Sowa J. Knowledge Representation: Logical, Philosophical, and Computational Foundations. Brooks Cole Publishing Co., Pacific Grove, CA, 2000, V. 45(2), pp. 61 – 65.

9. Ihaka R., Gentleman R. A Language for Data Analysis and Graphics. Journal of Computational and Graphical Statistics, 1996, Vol. 5, No 3, pp. 299–314.

10. Matloff N. The Art of R Programming. A Tour of Statistical Software Design. San Francisco, No Starch Press, 2011. 316 p.


Review

For citations:


Makarevich T.I. Intellectual Analysis of Textual Information in Domain Fields in the System of e-Government. Digital Transformation. 2019;(2):46-52. (In Russ.) https://doi.org/10.38086/2522-9613-2019-2-46-52

Views: 3739


Creative Commons License
This work is licensed under a Creative Commons Attribution 4.0 License.


ISSN 2522-9613 (Print)
ISSN 2524-2822 (Online)