视觉分析中的意义生成和知识生成

M. Vuckovic, Johanna Schmidt
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引用次数: 0

摘要

交互式可视化工具和相关可视化技术旨在支持探索性数据分析,最终从大量原始数据中获得意义和知识发现。这些过程依赖于人类的视觉感知和认知,在这些过程中,人类分析师感知外部表征(系统结构、数据集、整体数据可视化),并形成各自的内部表征(外部系统的内部认知印记),从而能够更深入地理解所使用的系统和底层数据特征。这些内部表征通过与外部表征的持续互动而进一步发展。它们还取决于个体自身的认知途径。目前,对这些内部认知机制的形成和功能的理解还不够充分。因此,我们的目标是通过我们的日常数据探索工作流程提供我们自己对这些过程的解释。这是通过以下具体的探索性数据科学任务来完成的,同时使用不同的交互式视觉系统和相关的笔记本风格环境,这些环境具有不同的组织结构,因此可能需要不同的思维方法,形成意义和知识生成。在本文中,我们讨论了在执行探索性视觉分析的基本步骤时,当与这种不同的工具和方法的组织结构进行交互时,对人类分析人员的认知影响。
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On Sense Making and the Generation of Knowledge in Visual Analytics
Interactive visual tools and related visualization technologies, built to support explorative data analysis, ultimately lead to sense making and knowledge discovery from large volumes of raw data. These processes namely rely on human visual perception and cognition, in which human analysts perceive external representations (system structure, dataset, integral data visualizations) and form respective internal representations (internal cognitive imprints of external systems) that enable deeper comprehension of the employed system and the underlying data features. These internal representations further evolve through continuous interaction with external representations. They also depend on the individual’s own cognitive pathways. Currently, there has been insufficient work on understanding how these internal cognitive mechanisms form and function. Hence, we aim to offer our own interpretations of such processes observed through our daily data exploration workflows. This is accomplished by following specific explorative data science tasks while working with diverse interactive visual systems and related notebook style environments that have different organizational structures and thus may entail different approaches to thinking and shaping sense making and knowledge generation. In this paper, we deliberate on the cognitive implications for human analysists when interacting with such a diverse organizational structure of tools and approaches when performing the essential steps of an explorative visual analysis.
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