Lei Fan, Ma Yuxin, Fotheringham A Stewart, Mack Elizabeth A, Li Ziqi, Sachdeva Mehak, Bardin Sarah, Maciejewski Ross
IEEE Trans Vis Comput Graph. 2024 Jan;30(1):1391-1401. doi: 10.1109/TVCG.2023.3327359. Epub 2023 Dec 27.
Geographic regression models of various descriptions are often applied to identify patterns and anomalies in the determinants of spatially distributed observations. These types of analyses focus on answering why questions about underlying spatial phenomena, e.g., why is crime higher in this locale, why do children in one school district outperform those in another, etc.? Answers to these questions require explanations of the model structure, the choice of parameters, and contextualization of the findings with respect to their geographic context. This is particularly true for local forms of regression models which are focused on the role of locational context in determining human behavior. In this paper, we present GeoExplainer, a visual analytics framework designed to support analysts in creating explanative documentation that summarizes and contextualizes their spatial analyses. As analysts create their spatial models, our framework flags potential issues with model parameter selections, utilizes template-based text generation to summarize model outputs, and links with external knowledge repositories to provide annotations that help to explain the model results. As analysts explore the model results, all visualizations and annotations can be captured in an interactive report generation widget. We demonstrate our framework using a case study modeling the determinants of voting in the 2016 US Presidential Election.
各种描述的地理回归模型经常被用于识别空间分布观测值的决定因素中的模式和异常。这类分析侧重于回答关于潜在空间现象的“为什么”问题,例如,为什么这个地区的犯罪率更高,为什么一个学区的孩子比另一个学区的孩子表现更好等等?回答这些问题需要对模型结构、参数选择以及研究结果在地理背景下的情境化进行解释。对于专注于位置背景在决定人类行为中作用的局部形式的回归模型来说尤其如此。在本文中,我们展示了GeoExplainer,这是一个可视化分析框架,旨在支持分析师创建解释性文档,总结并情境化他们的空间分析。当分析师创建他们的空间模型时,我们的框架会标记模型参数选择中的潜在问题,利用基于模板的文本生成来总结模型输出,并与外部知识库链接以提供有助于解释模型结果的注释。当分析师探索模型结果时,所有的可视化和注释都可以在一个交互式报告生成小部件中捕获。我们使用一个模拟2016年美国总统选举投票决定因素的案例研究来展示我们的框架。