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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.

Abstract

This study examines users' behavioural intention to use OpenClaw through the Cognition--Affect--Conation (CAC) framework. The research investigates how cognitive perceptions of the system influence affective responses and subsequently shape behavioural intention. Enabling factors include perceived personalisation, perceived intelligence, and relative advantage, while inhibiting factors include privacy concern, algorithmic opacity, and perceived risk. Survey data from 436 OpenClaw users were analysed using structural equation modelling. The results show that positive perceptions strengthen users' attitudes toward OpenClaw, which increase behavioural intention, whereas negative perceptions increase distrust and reduce intention to use the system. The study provides insights into the psychological mechanisms influencing the adoption of autonomous AI agents.