论文标题

因果流:事件序列中因果关系的视觉分析

CausalFlow: Visual Analytics of Causality in Event Sequences

论文作者

Xie, Xiao, He, Moqi, Wu, Yingcai

论文摘要

了解事件的关系在不同领域中起着重要作用,例如确定用户从应用程序日志中的某些操作以及根据历史记录解释体育参与者行为的原因。共同发生已被广泛用于表征事件的关系。但是,共同存在关系提供的见解含糊不清,这导致难以解决域问题。在本文中,我们使用因果关系来建模事件的关系,并提出一种可视化方法,以进行事件序列的因果分析。我们将自动因果发现方法整合到该方法中,并提出一个用于检测事件因果关系的模型。考虑到可解释性,我们设计了一种名为因果关系流动的新型可视化,以将检测到的因果关系整合到基于时间表的事件序列可视化中。通过这种设计,用户可以了解某些事件的发生并确定因果途径。我们进一步实施了一个交互式系统,以帮助用户全面分析事件序列。提供了两项案例研究以评估该方法的可用性。

Understanding the relation of events plays an important role in different domains, such as identifying the reasons for users' certain actions from application logs as well as explaining sports players' behaviors according to historical records. Co-occurrence has been widely used to characterize the relation of events. However, insights provided by the co-occurrence relation are vague, which leads to difficulties in addressing domain problems. In this paper, we use causation to model the relation of events and present a visualization approach for conducting the causation analysis of event sequences. We integrate automatic causal discovery methods into the approach and propose a model for detecting event causalities. Considering the interpretability, we design a novel visualization named causal flow to integrate the detected causality into timeline-based event sequence visualizations. With this design, users can understand the occurrence of certain events and identify the causal pathways. We further implement an interactive system to help users comprehensively analyze event sequences. Two case studies are provided to evaluate the usability of the approach.

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