A Comparative Study on Reward Models for UI Adaptation with Reinforcement Learning
Daniel Gaspar-Figueiredo, Silvia Abrah\~ao, Marta Fern\'andez-Diego,, Emilio Insfran

TL;DR
This study compares two reward modeling approaches for reinforcement learning-based UI adaptation, aiming to improve user experience by evaluating their effectiveness through controlled experiments and user satisfaction metrics.
Contribution
It provides empirical evidence on the effectiveness of reward models derived from predictive HCI and augmented with human feedback for UI adaptation using RL.
Findings
HCI-based reward models improve user engagement.
HCI&HF models enhance user satisfaction.
Empirical results support the use of reward models in RL for UI adaptation.
Abstract
Adapting the User Interface (UI) of software systems to user requirements and the context of use is challenging. The main difficulty consists of suggesting the right adaptation at the right time in the right place in order to make it valuable for end-users. We believe that recent progress in Machine Learning techniques provides useful ways in which to support adaptation more effectively. In particular, Reinforcement learning (RL) can be used to personalise interfaces for each context of use in order to improve the user experience (UX). However, determining the reward of each adaptation alternative is a challenge in RL for UI adaptation. Recent research has explored the use of reward models to address this challenge, but there is currently no empirical evidence on this type of model. In this paper, we propose a confirmatory study design that aims to investigate the effectiveness of two…
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Taxonomy
TopicsOpen Source Software Innovations · Technology Adoption and User Behaviour
