Publication Type

Master Thesis

Version

publishedVersion

Publication Date

5-2025

Abstract

The growing integration of generative artificial intelligence (AI) into everyday life has raised questions about its potential psychological and behavioral consequences. The present research develops and validates the Generative AI Dependency Scale, a multidimensional tool developed to assess individual differences in dependency on generative AI systems. Across six studies involving 1,223 participants from the United States and Singapore, the Generative AI Dependency Scale demonstrated strong psychometric properties, including a stable three-factor structure (cognitive preoccupation, negative consequences, withdrawal) and good test-retest reliability (ICC = .85). Confirmatory factor analysis supported a higher-order dependency construct, and scalar measurement invariance was established across sex and cultures. Convergent and discriminant validity were demonstrated through associations with an existing AI addiction scale and the Big Five personality traits respectively. Generative AI dependency was also significantly associated with a range of motivational (e.g., lower basic psychological need satisfaction, greater fear of missing out), behavioral (e.g., increased procrastination and cognitive failures, lower task performance and critical thinking), and psychological (e.g., reduced self-concept clarity, greater loneliness) outcomes. Framed within self-determination theory, these findings suggest that generative AI dependency reflects not merely excessive technology use, but a deeper misalignment between psychological needs and the strategies employed to meet them. The Generative AI Dependency Scale offers a psychometrically robust foundation for future research into the impacts of generative AI, with implications for responsible AI design and use.

Keywords

generative artificial intelligence, dependency, scale validation

Degree Awarded

MPhil in Psychology

Discipline

Artificial Intelligence and Robotics | Psychology

Supervisor(s)

HARTANTO, Andree

First Page

1

Last Page

87

Publisher

Singapore Management University

City or Country

Singapore

Copyright Owner and License

Author

Available for download on Thursday, July 09, 2026

Share

COinS