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Quantitative Analysis Powered by Naïve Bayes Classifier Algorithm to Data-Related Publications Social-Scientific Network

Authors
  • Tobias Ribeiro Sombra

    Brazilian Institute of Information, Science and Technology (IBICT) - Federal University of Rio de Janeiro (UFRJ)

    Author

  • Rose Marie Santini

    Brazilian Institute of Information, Science and Technology (IBICT) - Federal University of Rio de Janeiro (UFRJ)

    Author

  • Emerson Cordeiro Morais

    Federal Rural University of Amazonia (UFRA)

    Author

  • Walmir Oliveira Couto

    Federal Rural University of Amazonia (UFRA)

    Author

  • Alex de Jesus Zissou

    Federal Rural University of Amazonia (UFRA)

    Author

  • Pedro Silvestre da Silva Campos

    Federal Rural University of Amazonia (UFRA)

    Author

  • Paulo Cerqueira dos Santos Junior

    Federal Rural University of Amazonia (UFRA)

    Author

  • Glauber Tadaiesky Marques

    Federal Rural University of Amazonia (UFRA)

    Author

  • Otavio Andre Chase

    Federal Rural University of Amazonia (UFRA)

    Author

  • José Felipe Souza de Almeida

    Federal Rural University of Amazonia (UFRA)

    Author

Keywords:
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Abstract

Quantitative evaluation of a dataset can play an important role in pattern recognition of technical-scientific research involving behavior and dynamics in social networks. As an example, are the adaptive feature weighting approaches by naive Bayes text algorithm. This work aims to present an exploratory data analysis with a quantitative approach that involves pattern recognition using the Mendeley research network; to identify logics given the popularity of document access. To better analyze the results, the work was divided into four categories, each with three subcategories, that is, five, three, and two output classes. The name for these categories came up due to data collection, which also presented documents with open access, dismembering proceedings, and journals for two more categories. As a result, the performance for the test examples showed a lower error rate related to the subcategory two output classes in the criterion of popularity by using the naive Bayes algorithm in Mendeley.

References

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Published
2020-06-01
Section
Journal Articles
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Copyright (c) 2020 Tobias Ribeiro Sombra, Rose Marie Santini, Emerson Cordeiro Morais, Walmir Oliveira Couto, Alex de Jesus Zissou, Pedro Silvestre da Silva Campos, Paulo Cerqueira dos Santos Junior, Glauber Tadaiesky Marques, Otavio Andre Chase, José Felipe Souza de Almeida

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How to Cite

Sombra, T., Santini, R., Morais, E., Couto, W., Zissou, A., Campos, P., Santos Junior, P., Marques, G. ., Chase, O., & Almeida, J. F. (2020). Quantitative Analysis Powered by Naïve Bayes Classifier Algorithm to Data-Related Publications Social-Scientific Network. International Journal for Innovation Education and Research, 8(6), 205-217. https://doi.org/10.31686/ijier.vol8.iss6.2390