Critical Factors in Young People’s Use and Non-Use of AI Technology for Emotion Regulation: A Pilot Study
Abstract
1. Introduction
2. Materials and Methods
2.1. Research Methods
2.2. Interview Questions
2.3. Procedure
2.4. Participants
2.5. Analysis
3. Results
3.1. Overview of the Data Coding and Analysis
3.2. Attitudes Toward AI Technology for Emotion Regulation
3.3. Reasons for Using AI Technology for Emotion Regulation
3.4. Reasons for Not Using AI Technology for Emotion Regulation
3.5. Grounded Theory
4. Discussion
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Abbreviations
AI | artificial intelligence |
References
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Categories | Subcategories | Definition | Percentage |
---|---|---|---|
Attitudes toward using AI technology for emotion regulation (16.25%) | Positive attitudes (47.24%) | A person’s favourable evaluation of using AI technology for emotion regulation | Regulating emotional states (44.15%) Functional values (38.96%) Raising emotional awareness (12.99%) Addressing the source problem (3.90%) |
Neutral attitudes (12.88%) | A person’s neither favourable nor unfavourable evaluation of using AI technology for emotion regulation | Usage environment (52.38%) No disadvantages (19.04%) Low positive impact (14.29%) Single form (14.29%) | |
Negative attitudes (39.88%) | A person’s unfavourable evaluation of using AI technology for emotion regulation | Negative effects (55.39%) Unresolved issues (15.38%) Inconvenience (12.31%) Poor quality-price ratio (7.69%) Complexity (4.62%) Addiction (3.07%) Security and privacy risks (1.54%) | |
Reasons for the use of AI technology for emotion regulation (56.07%) | Functional outcomes (76.48%) | The extent to which using AI technology for emotion regulation is perceived to be instrumental in achieving valued outcomes | Usefulness (23.57%) Privacy (21.66%) Trust (15.29%) Convenience (12.74%) Intelligent (12.74%) High value (5.1%) Accessibility (4.44%) Functionality (2.55%) Interactive feedback (1.91%) |
Hedonic outcomes (22.08%) | The individual’s level of curiosity during the interaction and the perception that the interaction is intrinsically enjoyable | Interest and fun (93.75%) Beautiful interface (4.17%) Emotional experience (2.08%) | |
Social influence (1.44%) | The extent to which social values and members of a social network influence the user behaviour | Peer influence (66.67%) Surrounding environment influence (33.33%) | |
Reasons for the non-use of AI technology for emotion regulation (27.68%) | Functional barriers (55.94%) | The extent to which the non-use of AI technology for emotion regulation is perceived to be instrumental in achieving valued outcomes | Low value (51.76%) Uselessness (27.50%) Lack of trust (16.25%) Inadequate functionality (1.99%) Emotions hard to understand (1.25%) Low accuracy (1.25%) |
Dispositional barriers (41.96%) | Personal factors associated with individuals’ attitudes and self-perceptions about oneself as a user | Inconvenience (36.67%) Difficulty with learning (33.33%) No interest (30%) | |
Environmental barriers (2.1%) | Factors that are beyond one’s control and are related to the individual’s life situation or environment at a particular time | No relevant products (56.69%) No professional platform or channel (30.75%) Lack of information (12.56%) |
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Wang, J.; Tang, H.; Man, S.-S.; Chen, Y.; Zhou, S.; Chan, H.-S. Critical Factors in Young People’s Use and Non-Use of AI Technology for Emotion Regulation: A Pilot Study. Appl. Sci. 2025, 15, 7476. https://doi.org/10.3390/app15137476
Wang J, Tang H, Man S-S, Chen Y, Zhou S, Chan H-S. Critical Factors in Young People’s Use and Non-Use of AI Technology for Emotion Regulation: A Pilot Study. Applied Sciences. 2025; 15(13):7476. https://doi.org/10.3390/app15137476
Chicago/Turabian StyleWang, Junyu, Hongying Tang, Siu-Shing Man, Yingwei Chen, Shuzhang Zhou, and Hoi-Shou (Alan) Chan. 2025. "Critical Factors in Young People’s Use and Non-Use of AI Technology for Emotion Regulation: A Pilot Study" Applied Sciences 15, no. 13: 7476. https://doi.org/10.3390/app15137476
APA StyleWang, J., Tang, H., Man, S.-S., Chen, Y., Zhou, S., & Chan, H.-S. (2025). Critical Factors in Young People’s Use and Non-Use of AI Technology for Emotion Regulation: A Pilot Study. Applied Sciences, 15(13), 7476. https://doi.org/10.3390/app15137476