Current work on using visual analytics to determine causal relations among variables has mostly been based on the concept of counterfactuals. As such the derived static causal networks do not take into account the effect of time as an indicator. However, knowing the time delay of a causal relation can be crucial as it instructs how and when actions should be taken. Yet, similar to static causality, deriving causal relations from observational time-series data, as opposed to designed experiments, is not a straightforward process. It can greatly benefit from human insight to break ties and resolve errors. We hence propose a set of visual analytics methods that allow humans to participate in the discovery of causal relations associated with windows of time delay. Specifically, we leverage a well-established method, logic-based causality, to enable analysts to test the significance of potential causes and measure their influences toward a certain effect. Furthermore, since an effect can be a cause of other effects, we allow users to aggregate different temporal cause-effect relations found with our method into a visual flow diagram to enable the discovery of temporal causal networks. To demonstrate the effectiveness of our methods we constructed a prototype system named DOMINO and showcase it via a number of case studies using real-world datasets. Finally, we also used DOMINO to conduct several evaluations with human analysts from different science domains in order to gain feedback on the utility of our system in practical scenarios.
翻译:目前利用视觉分析来确定变量之间因果关系的工作主要基于反事实概念。因此,衍生的静态因果关系网络没有考虑到时间作为指标的影响。然而,了解因果关系的时间拖延可能是至关重要的,因为它指示了如何和何时采取行动。然而,与静态因果关系一样,从观察时间序列数据中产生因果关系,而不是从设计实验中产生因果关系,并不是一个直接的过程。通过人类的洞察,打破联系和解决错误,可以极大地获益于人类的洞察。因此,我们提出一套视觉分析方法,允许人类参与发现与时间拖延窗口相关的因果关系。具体地说,我们利用一种成熟的方法,即基于逻辑的因果关系,使分析家能够测试潜在原因的意义并衡量其对某种效果的影响。此外,由于影响可能是其他影响的原因,我们允许用户将发现与我们方法的不同时间因果关系汇总成一个直观流图,以便能够发现时间因果关系网络。为了展示我们用在现实科学领域构建一个名为DOMINO的原型系统的有效性,我们用数字来展示我们从实际科学领域中获取的数据。我们用数字来从DOMOO的模型系统,然后用数字来展示我们用不同科学领域的数据分析。</s>