ONTOLOGICAL MODELING OF INFORMATION DATA OF DIGITAL CRIMINAL CRIME

Author:

Vlasenko Lidiia1ORCID,Lutska Nataliia2ORCID,Savchenko Tetiana1ORCID,Bohdanov Oleksandr3ORCID

Affiliation:

1. State University of Trade and Economics

2. National University of Food Technologies

3. Borys Grinchenko Kyiv University

Abstract

In the article, an ontological model of information data of a digital criminal offense is formed and researched. Ontological modeling made it possible to conceptualize knowledge and effectively overcome the problems of insufficient structure, ambiguity and inconsistency of data and knowledge in the field of digital forensics. On the basis of the conducted classification, five main classes (Digital Crime, Digital Traces, Types of Crimes, Criminal and Criminal Liability) were identified, which include multiple user and non-user instances, including relevant articles of the Criminal Code of Ukraine and international law. The user creates instances of three classes: Digital Crime, Digital Traces, and Criminal. They contain personal information about digital crime and are the main data of the user part of the ontological model as a knowledge base. The Crime Types and Criminal Liability classes are non-user and can only be modified by model support specialists. The ontology model is implemented in Protege in the OWL language, which is an informal standard for creating and sharing ontologies. Of the selected seven relationships between entities, only three are entered into the ontology by the user, the others are formed automatically based on the developed SWRL rules. Using the SPARQL query language, real-time information search, filtering, and analysis patterns are provided to help discover complex relationships between objects and generate new ontological knowledge. The results of the study highlight the importance of ontology modeling in the field of digital forensics and how SPARQL queries can be used to improve data processing, analysis and understanding of knowledge in this field.

Publisher

Borys Grinchenko Kyiv University

Subject

General Medicine

Reference12 articles.

1. Federal Bureau of Investigation. (2022). Internet Crime Report 2022. https://www.ic3.gov/Media/PDF/AnnualReport/2022_IC3Report.pdf

2. Pro zareyestrovani kryminalni pravoporushennya ta rezultati yikh dosudovoho rozsliduvannya [About Registered Criminal Offenses and the Results of Their Preliminary Investigation]. https://gp.gov.ua/ua/posts/pro-zareyestrovani-kriminalni-pravoporushennya-ta-rezultati-yih-dosudovogo-rozsliduvannya-2

3. Kryminalnyi kodeks Ukrainy [Criminal Code of Ukraine]. https://zakon.rada.gov.ua/laws/show/2341-14

4. Brady, O., Overill, R., & Keppens, J. (2014). Addressing the increasing volume and variety of digital evidence using an ontology. In 2014 IEEE Joint Intelligence and Security Informatics Conference (pp. 176-183). IEEE. DOI: 10.1109/JISIC.2014.34

5. Карі, Н. М., & Вентер, Х. С. (2014). Toward a general ontology for digital forensic disciplines. Journal of Forensic Sciences, 59(5), 1231-1241.

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