Integrating Human Feedback into a Reinforcement Learning-Based Framework for Adaptive User Interfaces
April 29, 2025 Β· Declared Dead Β· π International Conference on Evaluation & Assessment in Software Engineering
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Authors
Daniel Gaspar-Figueiredo, Marta FernΓ‘ndez-Diego, Silvia AbrahΓ£o, Emilio Insfran
arXiv ID
2504.20782
Category
cs.HC: Human-Computer Interaction
Cross-listed
cs.SE
Citations
0
Venue
International Conference on Evaluation & Assessment in Software Engineering
Last Checked
4 months ago
Abstract
Adaptive User Interfaces (AUI) play a crucial role in modern software applications by dynamically adjusting interface elements to accommodate users' diverse and evolving needs. However, existing adaptation strategies often lack real-time responsiveness. Reinforcement Learning (RL) has emerged as a promising approach for addressing complex, sequential adaptation challenges, enabling adaptive systems to learn optimal policies based on previous adaptation experiences. Although RL has been applied to AUIs,integrating RL agents effectively within user interactions remains a challenge. In this paper, we enhance a RL-based Adaptive User Interface adaption framework by incorporating personalized human feedback directly into the leaning process. Unlike prior approaches that rely on a single pre-trained RL model, our approach trains a unique RL agent for each user, allowing individuals to actively shape their personal RL agent's policy, potentially leading to more personalized and responsive UI adaptations. To evaluate this approach, we conducted an empirical study to assess the impact of integrating human feedback into the RL-based Adaptive User Interface adaption framework and its effect on User Experience (UX). The study involved 33 participants interacting with AUIs incorporating human feedback and non-adaptive user interfaces in two domains: an e-learning platform and a trip-planning application. The results suggest that incorporating human feedback into RL-driven adaptations significantly enhances UX, offering promising directions for advancing adaptive capabilities and user-centered design in AUIs.
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