Research Model Proposal on Cognitive Overload, Anxiety, Cognitive Fatigue, Avoidance Behavior, and Data Literacy in Big Data Environments: Results of a Systematic Literature Review

Autores

DOI:

https://doi.org/10.4301/S1807-1775202623003

Palavras-chave:

Systematic Literature Review, PRISMA, Conceptual Model, Big Data, Big Data Context

Resumo

This study analyzes how the Management and Information Systems literature has investigated the associations between Overload, Anxiety, Fatigue, Avoidance, and Literacy to develop a preliminary research model in Big Data environments to be tested in future studies. We identified 93 articles for analysis, and we found nine direct associations between these variables. These results served as a basis for us to appropriate their theoretical backgrounds and adapt them to develop a preliminary research model to investigate how Cognitive Overload, Anxiety, Cognitive Fatigue, Avoidance Behavior, and Data Literacy are associated in Big Data Environments.

Biografia do Autor

Bibiana Giudice da Silva Cezar, Federal University of Rio Grande do Sul

Master in Management and PhD Candidate of the Management School of the Federal University of Rio Grande do Sul (PPGA / EA / UFRGS)

Antônio Carlos Gastaud Maçada, Federal University of Rio Grande do Sul

PhD and Full Professor of the Management School of the Federal University of Rio Grande do Sul (PPGA / EA / UFRGS)

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2026-04-19

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Giudice da Silva Cezar, B., & Gastaud Maçada, A. C. (2026). Research Model Proposal on Cognitive Overload, Anxiety, Cognitive Fatigue, Avoidance Behavior, and Data Literacy in Big Data Environments: Results of a Systematic Literature Review. Journal of Information Systems and Technology Management, 23. https://doi.org/10.4301/S1807-1775202623003

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