基于图的叙事可视化混合多模型语义交互

Brian Felipe Keith Norambuena, Tanushree Mitra, Chris North
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引用次数: 1

摘要

叙事意义是理解序列数据的重要组成部分。叙事地图是一种视觉表现模型,可以帮助分析人员理解叙事。在这项工作中,我们提出了一个用于叙事地图的语义交互(SI)框架,可以通过他们的语义构建过程来支持分析师。与传统的SI系统依赖于降维并在投影空间上工作相比,我们的方法有一个额外的抽象层——结构空间——它建立在投影空间之上,并以离散结构对叙事进行编码。这个额外的层引入了在集成SI和叙事提取管道时必须解决的额外挑战。我们通过提出混合多模型语义交互(3MSI)的一般概念来解决这些挑战-一个SI管道,其中最高级别模型对应于抽象离散结构,较低级别模型是连续的。为了评估我们的3MSI叙事地图模型的性能,我们提出了基于定量模拟的评估和基于案例研究和专家反馈的定性评估。我们发现我们的SI系统可以模拟分析人员的意图,并支持叙事地图的增量形式主义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mixed Multi-Model Semantic Interaction for Graph-based Narrative Visualizations
Narrative sensemaking is an essential part of understanding sequential data. Narrative maps are a visual representation model that can assist analysts to understand narratives. In this work, we present a semantic interaction (SI) framework for narrative maps that can support analysts through their sensemaking process. In contrast to traditional SI systems which rely on dimensionality reduction and work on a projection space, our approach has an additional abstraction layer—the structure space—that builds upon the projection space and encodes the narrative in a discrete structure. This extra layer introduces additional challenges that must be addressed when integrating SI with the narrative extraction pipeline. We address these challenges by presenting the general concept of Mixed Multi-Model Semantic Interaction (3MSI)—an SI pipeline, where the highest-level model corresponds to an abstract discrete structure and the lower-level models are continuous. To evaluate the performance of our 3MSI models for narrative maps, we present a quantitative simulation-based evaluation and a qualitative evaluation with case studies and expert feedback. We find that our SI system can model the analysts’ intent and support incremental formalism for narrative maps.
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