A Graph DB-Based Solution for Semantic Technologies in the Future Internet

Author:

Ferilli Stefano1ORCID,Bernasconi Eleonora1ORCID,Di Pierro Davide1ORCID,Redavid Domenico1ORCID

Affiliation:

1. Department of Computer Science, University of Bari, 70125 Bari, Italy

Abstract

With the progressive improvements in the power, effectiveness, and reliability of AI solutions, more and more critical human problems are being handled by automated AI-based tools and systems. For more complex or particularly critical applications, the level of knowledge, not just information, must be handled by systems where explicit relationships among objects are represented and processed. For this purpose, the knowledge representation branch of AI proposes Knowledge Graphs, widely used in the Semantic Web, where different online applications may interact by understanding the meaning of the data they process and exchange. This paper describes a framework and online platform for the Internet-based knowledge graph definition, population, and exploitation based on the LPG graph model. Its main advantages are its efficiency and representational power and the wide range of functions that it provides to its users beyond traditional Semantic Web reasoning: network analysis, data mining, multistrategy reasoning, and knowledge browsing. Still, it can also be mapped onto the SW.

Publisher

MDPI AG

Subject

Computer Networks and Communications

Reference57 articles.

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4. Di Pierro, D., and Ferilli, S. (2023, January 2–5). An API for Ontology-driven LPG Graph DB Management. Proceedings of the 31st Symposium of Advanced Database Systems, Padua, Italy.

5. Krötzsch, M., and Thost, V. (2016). Proceedings of the Semantic Web—ISWC 2016: 15th International Semantic Web Conference, Kobe, Japan, 17–21 October 2016, Proceedings, Part I 15, Springer.

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