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A light-weight dynamic ontology for Internet of Things using machine learning technique

Hafizur Rahman, Md. Iftekhar Hussain

2020ICT Express24 citationsDOIOpen Access PDF

Abstract

Ensuring semantic interoperability in the future Internet of Things can be a challenging task due to their heterogeneous nature and increasing scale. Ontologies are widely used to achieve semantic interoperability among IoT applications and services. But, available ontologies are very complex, static or unable to fulfill the requirements of IoT. To address this concern, we proposed a light-weight dynamic ontology using only the most important concepts and clustering technique. It provides dynamic semantics automatically to include additional concepts using machine learning technique. Compared to the existing ontology, the proposed model reduces query response time and memory consumption to some extent.

Topics & Concepts

InteroperabilityOntologyComputer scienceOntology learningUpper ontologySemantic interoperabilitySemantics (computer science)Internet of ThingsOntology-based data integrationInformation retrievalWorld Wide WebSemantic WebSuggested Upper Merged OntologyProgramming languagePhilosophyEpistemologyIoT and Edge/Fog ComputingService-Oriented Architecture and Web ServicesContext-Aware Activity Recognition Systems
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