HCLGAug 25, 2023

GeoExplainer: A Visual Analytics Framework for Spatial Modeling Contextualization and Report Generation

arXiv:2308.13588v112 citationsh-index: 42
Originality Synthesis-oriented
AI Analysis

This work addresses the need for better explanation tools in spatial modeling for analysts, though it is incremental as it builds on existing visual analytics and template-based methods.

The authors tackled the challenge of explaining geographic regression models by developing GeoExplainer, a visual analytics framework that assists analysts in creating contextualized reports, as demonstrated in a case study on voting determinants in the 2016 US Presidential Election.

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.

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