Análise de cocitações em múltiplas perspectivas sobre o tema Big Data analytics

Autores

  • Arthur Moura Vaz Engenharia de Produção, Universidade Federal de Catalão
  • Stella Jacyszyn Bachega Engenharia de Produção, Universidade Federal de Catalão
  • Dalton Matsuo Tavares Ciência da Computação, Universidade Federal de Catalão

DOI:

https://doi.org/10.47456/bjpe.v9i5.42739

Palavras-chave:

Big Data Analytics, CiteSpace, Análise de Cocitações em Múltipas Perspectivas, Indústria 4.0

Resumo

Uma das tecnologias da indústria 4.0 é o Big Data Analytics, que permite transformar a grande quantidade de diversos tipos de dados em informações de valor e com potencial para tomada de decisões, inovação, entre outros. Neste contexto, o objetivo do artigo é apresentar uma análise de cocitações em múltiplas perspectivas sobre o tema Big Data Analytics. Para tanto, utilizou-se a explicação científica hipotético-dedutiva, a abordagem de pesquisa mista qualitativa e quantitativa e o método de análise de cocitações em múltiplas perspectivas, com o uso do software CiteSpace®. Considerou-se 11 anos completos de publicações e as publicações já disponibilizadas no ano corrente da pesquisa na Web of Science (WoS). Foram verificadas as principais linhas de pesquisa sobre o tema, os principais autores, as palavras-chave de destaque, a linha do tempo de realização dos estudos nas principais áreas de pesquisa e os países líderes em publicações. O estudo evidenciou a existência de uma forte relação entre o Big Data Analytics e o Supply Chain Management, sendo um grande indicativo da influência desta tecnologia no setor produtivo. Dentre as contribuições, esta pesquisa aponta possibilidades e vantagens de aplicação da análise de grande volume de dados e desafios da mesma.

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Publicado

23.10.2023

Como Citar

Vaz, A. M., Bachega, S. J., & Tavares, D. M. (2023). Análise de cocitações em múltiplas perspectivas sobre o tema Big Data analytics. Brazilian Journal of Production Engineering, 9(5), 134–143. https://doi.org/10.47456/bjpe.v9i5.42739

Edição

Seção

ENGENHARIA DE OPERAÇÕES E PROCESSOS DA PRODUÇÃO