Vietnam Journal of Computer Science (Feb 2020)

Common Representational Model and Ontologies for Effective Law Enforcement Solutions

  • Rafal Kozik,
  • Michal Choras,
  • Marek Pawlicki,
  • Witold Holubowicz,
  • Dirk Pallmer,
  • Wilmuth Mueller,
  • Ernst-Josef Behmer,
  • Ioannis Loumiotis,
  • Konstantinos Demestichas,
  • Roxana Horincar,
  • Claire Laudy,
  • David Faure

DOI
https://doi.org/10.1142/S2196888820020017
Journal volume & issue
Vol. 7, no. 1
pp. 1 – 18

Abstract

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Ontologies have developed into a prevailing technique for establishing semantic interoperability among heterogeneous systems transacting information. An ontology is an unambiguous blueprint of a concept. For Artificial Intelligence, only the defined notions can be considered existent. Thus, in relation to AI, an ontology can be understood as part of a program which delineates a collection of descriptions. An ontology, therefore, correlates the labels of the entities in the universe of discourse with wording that holds meaning for humans, explaining what those labels signify, along with the precise principles that force the interpretation and semantic utilization of these labels. An ontology constitutes a proper statement of a logical theory. It is a crucial component of a system with the capability to process, manage, analyze, correlate and reason from the large datasets characterized by heterogeneity. This paper depicts the process of development of a Common Representational Model (CRM) on top of several ontologies, taxonomies and classifications to facilitate computational and data mining functionalities. The building blocks of said CRM are delineated in detail, as well as its application in a specific use case.

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