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Exploring the NeuroIS Potential for Generative Artificial Intelligence: Findings from a Literature Review

In: Information Systems and Neuroscience

Author

Listed:
  • Leonardo Banh

    (University of Duisburg-Essen, Rhine-Ruhr Institute of Information Systems)

  • Fabian J. Stangl

    (University of Applied Sciences Upper Austria, Digital Business Institute, School of Business and Management)

  • Gero Strobel

    (University of Duisburg-Essen, Rhine-Ruhr Institute of Information Systems)

  • René Riedl

    (University of Applied Sciences Upper Austria, Digital Business Institute, School of Business and Management
    Johannes Kepler University Linz, Institute of Business Informatics—Information Engineering)

Abstract

Generative Artificial Intelligence (GenAI) is transforming human–computer interaction, shaping behavior as well as cognitive and emotional processes. This paper explores how Neuro-Information Systems (NeuroIS) measurements can be applied to the study of GenAI, addressing their role in human-AI interaction. Through a literature review, we identify 21 papers using neurophysiological measurements, including autonomic nervous system (ANS) markers (e.g., eye-tracking), brain imaging (e.g., EEG), and multimodal approaches such as combining eye tracking and EEG. Our findings highlight main research themes, including cognitive offloading, trust, and decision-making biases in human interaction with GenAI. While research on this topic is becoming more prominent, neurophysiological investigations remain limited. We anticipate that measures of brain and ANS system activity, as well as hormone measures, will play an increasing role in future empirical research on GenAI. This study contributes to the advancement of NeuroIS by providing a structured foundation for better understanding the role of GenAI in this research field.

Suggested Citation

  • Leonardo Banh & Fabian J. Stangl & Gero Strobel & René Riedl, 2025. "Exploring the NeuroIS Potential for Generative Artificial Intelligence: Findings from a Literature Review," Lecture Notes in Information Systems and Organization, in: Fred D. Davis & René Riedl & Jan vom Brocke & Pierre-Majorique Léger & Adriane B. Randolph & Gernot (ed.), Information Systems and Neuroscience, pages 11-25, Springer.
  • Handle: RePEc:spr:lnichp:978-3-032-00815-2_2
    DOI: 10.1007/978-3-032-00815-2_2
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