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Distinguishing causation and correlation: Causal learning from time-series graphs with trends

机译:区分因果关系与关联:因趋势时序图的因果学习

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Time-series graphs are ubiquitous in scientific and popular communications and in mobile health tracking apps. We studied if people can accurately judge whether there is a relation between the two variables in a time-series graph, which is especially challenging if the variables exhibit temporal trends. We found that, for the most part, participants were able to discriminate positive vs. negative relations even when there were strong temporal trends; however, when there is a positive causal relation but opposing temporal trends (one variable increases and the other decreases over time), people have difficulty inferring the positive causal relation. Further, we found that a simple dynamic presentation can ameliorate this challenge. The present finding sheds light on when people can and cannot accurately learn causal relations from time-series data and how to present graphs to aid interpretability.
机译:时间序列图在科学和流行的通信和移动健康跟踪应用中都是无处不在的。 我们研究了人们是否可以准确判断时间序列图中的两个变量之间是否存在关系,如果变量表现出时间趋势,这尤其具有挑战性。 我们发现,在大多数情况下,参与者即使存在强大的时间趋势,参与者也能够区分积极关系; 然而,当存在正面的因果关系但相反的时间趋势(一个变量增加和随着时间的推移),人们难以推断出积极因果关系。 此外,我们发现简单的动态演示可以改善这一挑战。 当人们可以且无法准确地学习来自时间序列数据的因果关系以及如何呈现图表以帮助解释性时,目前发现棚灯。

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