User Agency and System Automation in Interactive Intelligent Systems
Thomas Langerak

TL;DR
This paper explores balancing user agency and system automation in intelligent systems through innovative hardware, control methods, and adaptive interfaces, aiming to improve usability and user autonomy.
Contribution
It introduces a novel electromagnetic haptic feedback device, an integrated sensing system, an optimal control method, and a reinforcement learning approach for adaptive interfaces.
Findings
Shared control outperforms naive strategies in user studies.
Explicit and implicit models improve control accuracy.
Physical device design influences the agency-automation trade-off.
Abstract
Balancing user agency and system automation is essential for effective human-AI interactions. Fully automated systems can deliver efficiency but risk undermining usability and user autonomy, while purely manual tools are often inefficient and fail to enhance user capabilities. This dissertation addresses the question: "How can we balance user agency and system automation for interactions with intelligent systems?" We present four main contributions. First, we develop a spherical electromagnet that provides adjustable forces on an untethered tool, allowing haptic feedback while preserving user agency. Second, we create an integrated sensing and actuation system that tracks a passive magnetic tool in 3D and delivers haptic feedback without external tracking. Third, we propose an optimal control method for electromagnetic haptic guidance that balances user input with system control,…
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