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research-article

Cognitive Overload, Anxiety, Cognitive Fatigue, Avoidance Behavior and Data Literacy in Big Data environments

Published: 01 November 2023 Publication History

Highlights

As Cognitive Overload increases, so does the Anxiety and the Avoidance Behavior.
The effect of Cognitive Overload on Cognitive Fatigue is fully mediated by Anxiety.
The effect of Anxiety on Avoidance Behavior is fully mediated by Cognitive Fatigue.
Higher Data Literacy decrease Cognitive Overload but increase Cognitive Fatigue.
Cognitive Overload mediates the effect of Data Literacy on Anxiety and Avoidance Behavior.

Abstract

We aim to investigate how Cognitive Overload, Anxiety, Cognitive Fatigue, Avoidance Behavior and Data Literacy are related in Big Data environments. We developed a survey with 372 respondents and analyze the data using Partial Least Squares Structural Equation Modeling. The results demonstrate that Cognitive Overload is positively related to Anxiety and Avoidance Behavior. The relation between Cognitive Overload and Cognitive Fatigue is fully mediated by Anxiety. Anxiety is positively related to Cognitive Fatigue. The relation between Anxiety and Avoidance Behavior is fully mediated by Cognitive Fatigue. Cognitive Fatigue is positively related to Avoidance Behavior. Data Literacy is negatively related to Cognitive Overload and positively related to Cognitive Fatigue. The inverse relations between Data Literacy and Anxiety and Data Literacy and Avoidance Behavior are fully mediated by Cognitive Overload. The inverse relation between Data Literacy and Avoidance Behavior is fully mediated jointly by Cognitive Overload, Anxiety and Cognitive Fatigue.

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  1. Cognitive Overload, Anxiety, Cognitive Fatigue, Avoidance Behavior and Data Literacy in Big Data environments
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      cover image Information Processing and Management: an International Journal
      Information Processing and Management: an International Journal  Volume 60, Issue 6
      Nov 2023
      556 pages

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      Pergamon Press, Inc.

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      Publication History

      Published: 01 November 2023

      Author Tags

      1. Cognitive Overload
      2. Anxiety
      3. Cognitive Fatigue
      4. Avoidance Behavior
      5. Data Literacy
      6. Big Data

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