Adaptive and intelligent user interfaces have been proposed as a critical component of a successful extended reality (XR) system. In particular, a predictive system can make inferences about a user and provide them with task-relevant recommendations or adaptations. However, we believe such adaptive interfaces should carefully consider the overall \emph{cost} of interactions to better address uncertainty of predictions. In this position paper, we discuss a computational approach to adapt XR interfaces, with the goal of improving user experience and performance. Our novel model, applied to menu selection tasks, simulates user interactions by considering both cognitive and motor costs. In contrast to greedy algorithms that adapt based on predictions alone, our model holistically accounts for costs and benefits of adaptations towards adapting the interface and providing optimal recommendations to the user.
翻译:提出了适应性和智能用户界面,作为成功的扩展现实(XR)系统的关键组成部分。特别是,预测系统可以对用户作出推断,并向他们提供与任务有关的建议或调整。然而,我们认为,这种适应性界面应当仔细考虑相互作用的总体/emph{cost},以便更好地解决预测的不确定性。在本立场文件中,我们讨论了调整XR接口的计算方法,目的是改进用户的经验和性能。我们的新颖模式适用于菜单选择任务,通过考虑认知和运动成本来模拟用户互动。与仅根据预测进行调整的贪婪算法相比,我们的模式全面核算了调整接口和向用户提供最佳建议的适应成本和效益。