Examining Users' Behavioural Intention to Use OpenClaw Through the Cognition--Affect--Conation Framework
arXiv cs.AI / 3/13/2026
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Key Points
- The paper applies the Cognition–Affect–Conation framework to investigate how users' cognitive perceptions of OpenClaw shape affective responses and subsequent behavioral intention to use the system.
- Enablers include perceived personalisation, perceived intelligence, and relative advantage; inhibitors include privacy concern, algorithmic opacity, and perceived risk.
- Data from 436 OpenClaw users analyzed via structural equation modelling.
- Positive perceptions strengthen attitudes and increase intention to use OpenClaw, while negative perceptions increase distrust and reduce intention.
- Findings offer insights into the psychological mechanisms underlying the adoption of autonomous AI agents and implications for UX, trust, and privacy design.
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