Avaliando a literatura relacionada ao desemprego e seus temas-chave: uma análise bibliométrica nas bases de dados Scopus e Web of Science

Autores

DOI:

https://doi.org/10.5902/1983465992362

Palavras-chave:

Desemprego, Revisão de Literatura, Análise Bibliométrica

Resumo

Objetivo – Considerando a relevância temática e as discussões que perduram no tempo em estudos relacionados ao desemprego, o objetivo principal deste estudo é identificar os tópicos motrizes em pesquisas sobre o tema.

Metodologia/Abordagem – Uma análise bibliométrica foi conduzida em uma amostra de 913 documentos extraídos das bases de dados Scopus e Web of Science. Os dados destes repositórios foram analisados tanto em conjunto como de forma separada, a depender da análise. O tratamento de dados e análises foram feitas via software R-Studio em seus pacotes e funções bibliométricas específicas.

Resultados – Tópicos como taxas de desemprego, empreendedorismo, inovação, gênero e impactos da COVID-19 foram identificados como forças motrizes na área. Conclui-se que, embora esses tópicos estejam moldando as discussões na literatura, a maioria das pesquisas têm se concentrado em economias avançadas, resultando em escassez de estudos que abordem outras realidades.

Originalidade/valor – Este estudo apresenta análise em dupla base de dados abrangendo de 1960 a 2024, tempo maior que o coberto em estudos semelhantes. Ao tratar estudos de Scopus e da Web of Science, o mapeamento temático é integrado, revelando tanto tópicos socioeconômicos persistentes (como a dinâmica entre inflação e desemprego) como emergentes (gênero, impactos na saúde e respostas empreendedoras à COVID-19). A amostra de 913 artigos de periódicos de acesso aberto garante uma seleção rigorosa e reprodutível, enquanto os resultados podem auxiliar pesquisadores, políticos e o mercado acerca de elementos influentes na proposição de intervenções mais assertivas ao mercado de trabalho.

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Biografia do Autor

Jardel Augusto Gomes Rodrigues Alves, Universidade de São Paulo

Doutor e Alumni de Administração pela Universidade de São Paulo, Mestre pela Universidade Federal da Paraíba e Bacharel pela Universidade Federal de Campina Grande.

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Publicado

2026-04-07

Como Citar

Alves, J. A. G. R. (2026). Avaliando a literatura relacionada ao desemprego e seus temas-chave: uma análise bibliométrica nas bases de dados Scopus e Web of Science. Revista De Administração Da UFSM, 19(19), e7. https://doi.org/10.5902/1983465992362

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