DOMINO: Visual Causal Reasoning with Time-Dependent Phenomena
- URL: http://arxiv.org/abs/2303.06556v1
- Date: Sun, 12 Mar 2023 03:40:21 GMT
- Title: DOMINO: Visual Causal Reasoning with Time-Dependent Phenomena
- Authors: Jun Wang and Klaus Mueller
- Abstract summary: We 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.
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.
- Score: 59.291745595756346
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: 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.
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