As artificial intelligence (AI) tools rapidly integrate into academic practice, the emotional and ethical dimensions remain underexplored. This study presents an empirical investigation of AI-related moral emotions among university faculty, introducing the “AI Guilt Complex,” a pattern of anticipatory and experienced guilt shaping adoption. A mixed-methods survey of 109 academics examined prevalence, patterns, and management of moral distress. Quantitative results showed 35% worry AI undermines their credibility and 26% feel they are “cheating”. Anticipatory guilt (credibility concerns) significantly exceeded post-use guilt (remorse item; interpreted as anticipated for non-users), indicating socio-professional concerns outweigh personal distress. Cluster analysis identified four profiles: Comfortable Adopters (27%, low guilt, high use); Guilty Non-Users (29%, moderate guilt, low use); Cautious Users (28%, selective use, moderate guilt); and Morally Distressed Avoiders (16%, high guilt, minimal use). Qualitative analysis of 92 narratives revealed a temporal guilt pattern (initial guilt diminishing with use), authenticity concerns (“are AI-assisted ideas still mine?”), and fears of skill atrophy. Academics described five reconciliation strategies: tool framing, critical thinking emphasis, boundary setting, transparency, and denying reconciliation was needed. The 3.5% response rate may itself reflect moral disengagement or institutional silencing of ethical debate. Findings suggest sustainable AI integration requires addressing emotional and ethical dimensions alongside technical training. Results are exploratory and hypothesis-generating, requiring validation in larger samples. This study offers a preliminary ethical lens for understanding how academics experience and negotiate moral emotions in relation to AI adoption.
Diane Vassallo (Wed,) studied this question.