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How Artificial Intelligence Can Augment the Collection of Scientific Literature

Author

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  • Mokeddem Allal

    (University Algiers 3, Department of management and Technology, Algeria)

Abstract

This article describes the contribution of artificial intelligence (AI) to the literature collection process, which has become more efficient and more homogeneous. In this context, the researcher will receive his literature not only according to his field. Moreover, the literature is strongly linked to scientific and academic ambitions. AI through its deep learning techniques offers the possibility of speeding up the process of collecting augmented literature via an approach based on the annotation of scientific names and none-scientific names related to the field. AI provides original or reproduced research avenues with reliable and precise results. In this article, we have highlighted how to develop conceptual framework based on scientific and none-scientific names related to the area of expertise, all ensuring the reproducibility, reliability and accuracy of the study.

Suggested Citation

  • Mokeddem Allal, 2021. "How Artificial Intelligence Can Augment the Collection of Scientific Literature," European Journal of Formal Sciences and Engineering, European Center for Science Education and Research, vol. 3, July -Dec.
  • Handle: RePEc:eur:ejfejr:20
    DOI: 10.26417/772udo89i
    as

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