Zinat Kazi Tasnim, Sakhamuri Saimadhav Naga, Chen Aaron Sun, Liu Zhicheng
IEEE Trans Vis Comput Graph. 2025 Jan;31(1):842-852. doi: 10.1109/TVCG.2024.3456510. Epub 2024 Nov 25.
Despite the development of numerous visual analytics tools for event sequence data across various domains, including but not limited to healthcare, digital marketing, and user behavior analysis, comparing these domain-specific investigations and transferring the results to new datasets and problem areas remain challenging. Task abstractions can help us go beyond domain-specific details, but existing visualization task abstractions are insufficient for event sequence visual analytics because they primarily focus on multivariate datasets and often overlook automated analytical techniques. To address this gap, we propose a domain-agnostic multi-level task framework for event sequence analytics, derived from an analysis of 58 papers that present event sequence visualization systems. Our framework consists of four levels: objective, intent, strategy, and technique. Overall objectives identify the main goals of analysis. Intents comprises five high-level approaches adopted at each analysis step: augment data, simplify data, configure data, configure visualization, and manage provenance. Each intent is accomplished through a number of strategies, for instance, data simplification can be achieved through aggregation, summarization, or segmentation. Finally, each strategy can be implemented by a set of techniques depending on the input and output components. We further show that each technique can be expressed through a quartet of action-input-output-criteria. We demonstrate the framework's descriptive power through case studies and discuss its similarities and differences with previous event sequence task taxonomies.
尽管针对包括但不限于医疗保健、数字营销和用户行为分析等各个领域的事件序列数据开发了众多可视化分析工具,但比较这些特定领域的调查并将结果转移到新的数据集和问题领域仍然具有挑战性。任务抽象可以帮助我们超越特定领域的细节,但现有的可视化任务抽象对于事件序列可视化分析来说是不够的,因为它们主要关注多变量数据集,并且经常忽略自动化分析技术。为了弥补这一差距,我们通过对58篇介绍事件序列可视化系统的论文进行分析,提出了一种用于事件序列分析的领域无关的多层次任务框架。我们的框架由四个层次组成:目标、意图、策略和技术。总体目标确定分析的主要目标。意图包括在每个分析步骤中采用的五种高级方法:扩充数据、简化数据、配置数据、配置可视化和管理来源。每个意图都通过多种策略来实现,例如,数据简化可以通过聚合、汇总或分割来实现。最后,每个策略可以根据输入和输出组件由一组技术来实现。我们进一步表明,每种技术都可以通过动作-输入-输出-标准四元组来表达。我们通过案例研究展示了该框架的描述能力,并讨论了它与以前的事件序列任务分类法的异同。