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Applying Machine Learning and Model-Driven Approach for the Identification and Diagnosis Of Covid-19

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  • Mohammed Nadjib Tabbiche

    (University of Djillali Liabes, Sidi Bel-Abbes, Algeria)

  • Mohammed Fethi Khalfi

    (University of Djilali Liabes, Sidi Bel Abbes, Algeria)

  • Reda Adjoudj

    (University of Djillali Liabes, Sidi Bel-Abbes, Algeria)

Abstract

Ubiquitous environments are not fixed in time. Entities are constantly evolving; they are dynamic. Ubiquitous applications therefore have a strong need to adapt during their execution and react to the context changes, and developing ubiquitous applications is still complex. The use of the separation of needs and model-driven engineering present the promising solutions adopted in this approach to resolve this complexity. The authors thought that the best way to improve efficiency was to make these models intelligent. That's why they decided to propose an architecture combining machine learning with the domain of modeling. In this article, a novel tool is proposed for the design of ubiquitous applications, associated with a graphical modeling editor with a drag-drop palette, which will allow to instantiate in a graphical way in order to obtain platform independent model, which will be transformed into platform specific model using Acceleo language. The validity of the proposed framework has been demonstrated via a case study of COVID-19.

Suggested Citation

  • Mohammed Nadjib Tabbiche & Mohammed Fethi Khalfi & Reda Adjoudj, 2023. "Applying Machine Learning and Model-Driven Approach for the Identification and Diagnosis Of Covid-19," International Journal of Distributed Systems and Technologies (IJDST), IGI Global, vol. 14(1), pages 1-27, January.
  • Handle: RePEc:igg:jdst00:v:14:y:2023:i:1:p:1-27
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