Simulation-based Optimization for Augmented Reading
AI 摘要
提出基于模拟优化的增强阅读方法,利用资源理性模型改善文本呈现和理解。
主要贡献
- 提出基于模拟优化的增强阅读框架
- 设计离线和在线两种优化流程
- 利用资源理性模型模拟人类阅读行为
方法论
使用资源理性模型模拟读者,并通过离线探索和在线个性化两种优化方法调整文本界面。
原文摘要
Augmented reading systems aim to adapt text presentation to improve comprehension and task performance, yet existing approaches rely heavily on heuristics, opaque data-driven models, or repeated human involvement in the design loop. We propose framing augmented reading as a simulation-based optimization problem grounded in resource-rational models of human reading. These models instantiate a simulated reader that allocates limited cognitive resources, such as attention, memory, and time under task demands, enabling systematic evaluation of text user interfaces. We introduce two complementary optimization pipelines: an offline approach that explores design alternatives using simulated readers, and an online approach that personalizes reading interfaces in real time using ongoing interaction data. Together, this perspective enables adaptive, explainable, and scalable augmented reading design without relying solely on human testing.