DOI: 10.1177/21522715261465484 ISSN: 2152-2715
Longitudinal Predictors of Generative AI-Involved Cyberbullying: A Two-Wave Longitudinal Study
Rongjian Sun, Cheng-Yen Wang
The rise of generative artificial intelligence (GAI) has expanded the landscape of cyberbullying, necessitating an examination of the psychological and demographic factors underlying these behaviors. This two-wave longitudinal study (
N
= 1,019) investigated the associations between Dark Tetrad, gender, age, and GAI-involved cyberbullying (GAICB) over a 6-month interval. Hierarchical linear regressions indicated that psychopathy and male gender were longitudinal predictors of GAICB at Time 2, even after controlling for baseline behaviors at Time 1. While sadism was significant in the baseline model, its effect became nonsignificant after accounting for prior GAICB. Machiavellianism, narcissism, and age showed no significant effects. These results suggest that psychopathy and gender may be associated with AI-driven aggression, warranting further research into targeted prevention strategies.