Understanding how helpful a visualization is from experimental results is difficult because the observed performance is confounded with aspects of the study design, such as how useful the information that is visualized is for the task. We develop a rational agent framework for designing and interpreting visualization experiments. Our framework conceives two experiments with the same setup: one with behavioral agents (human subjects), the other one with a hypothetical rational agent. A visualization is evaluated by comparing the expected performance of behavioral agents to that of rational agent under different assumptions. Using recent visualization decision studies from the literature, we demonstrate how the framework can be used to pre-experimentally evaluate the experiment design by bounding the expected improvement in performance from having access to visualizations, and post-experimentally to deconfound errors of information extraction from errors of optimization, among other analyses.
翻译:理解可视化有多么有帮助是困难的,因为观察到的表现与研究设计的方面混淆在一起,例如可视化的信息对任务的有用性。我们开发了一个理性代理框架,用于设计和解释可视化实验。我们的框架构思具有相同设置的两个实验:一个使用行为代理(人类受试者),另一个使用假设的理性代理。通过比较在不同假设下行为代理和理性代理的预期表现来评估可视化。使用最近的可视化决策研究文献,我们演示了该框架如何用于先前实验设计的预实验评估,以界定从可视化获取信息的预期性能提高以及后实验的分析,以区分信息提取错误和优化错误等。