Exploratory Geovisualizations for Supporting the Qualitative Analysis and Synthesis of Place-Related Emotion Data

Q3 Earth and Planetary Sciences
S. Bleisch, D. Hollenstein
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引用次数: 12

Abstract

Locations become places through personal significance and experience. While place data are not emotion data, per se, personal significance and experience are often emotional. In this paper, we explore the potential of using visual data exploration to support the qualitative analysis of place-related emotion data. To do so, we draw upon Creswell’s (2009) definition of place to define a generic data model that contains emotion data for a given location and its locale. For each data dimension in our model, we present symbolization options that can be combined to create a range of interactive visualizations, specifically supporting re-expression. We discuss the usefulness of example visualizations, created based on a data set from a pilot study on how elderly women experience their neighborhood. We find that the visualizations support four broad qualitative data analysis tasks: revising categorizations, making connections and relationships, aggregating for synthesis, and corroborating evidence by combining sense of place with locale information to support a holistic interpretation of place data. In conclusion, the paper contributes to the literature in three ways. It provides a generic data model and associated symbolization options, and uses examples to show how place-related emotion data can be visualized. Further, the example visualizations make explicit how re-expression, the combination of emotion data with locale information, and visualization of vagueness and linked data support the analysis of emotion data. Finally, we advocate for visualization-supported qualitative data analysis in interdisciplinary teams so that more suitable maps are used and so that cartographers can better understand and support qualitative data analysis.
支持地点相关情感数据定性分析和合成的探索性地理可视化
地点通过个人意义和经历成为场所。虽然地点数据本身不是情感数据,但个人意义和经历往往是情感数据。在本文中,我们探讨了使用视觉数据探索来支持地点相关情感数据的定性分析的潜力。为此,我们借鉴了Creswell(2009)对地点的定义,定义了一个通用数据模型,该模型包含给定地点及其地区的情感数据。对于我们模型中的每个数据维度,我们提供了符号化选项,这些选项可以组合起来创建一系列交互式可视化,特别支持重新表达。我们讨论了实例可视化的有用性,这些可视化是基于一项关于老年妇女如何体验其社区的试点研究的数据集创建的。我们发现,可视化支持四种广泛的定性数据分析任务:修订分类、建立联系和关系、聚合合成,以及通过将地点感与地点信息相结合来佐证证据,以支持对地点数据的整体解释。总之,本文对文献的贡献有三个方面。它提供了一个通用的数据模型和相关的符号化选项,并使用示例来展示如何将与地点相关的情感数据可视化。此外,实例可视化还明确了情感数据的重新表达、情感数据与区域信息的结合以及模糊和关联数据的可视化如何支持情感数据的分析。最后,我们提倡在跨学科团队中使用可视化支持的定性数据分析,以便使用更合适的地图,使制图师能够更好地理解和支持定性数据分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Cartographic Perspectives
Cartographic Perspectives Environmental Science-Environmental Science (all)
CiteScore
1.00
自引率
0.00%
发文量
11
期刊介绍: Cartographic Perspectives is an international journal devoted to the study and practice of cartography in all its diversity. - Creative and innovative work encouraged - Full-text index available via EBSCO Academic Search Complete - Color figures at no cost to author - Indexed by Elsevier - Manuscript reviews to Authors in 6 weeks
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