Causal representation learning is the task of identifying the underlying causal variables and their relations from high-dimensional observations, such as images. Recent work has shown that one can reconstruct the causal variables from temporal sequences of observations under the assumption that there are no instantaneous causal relations between them. In practical applications, however, our measurement or frame rate might be slower than many of the causal effects. This effectively creates "instantaneous" effects and invalidates previous identifiability results. To address this issue, we propose iCITRIS, a causal representation learning method that can handle instantaneous effects in temporal sequences when given perfect interventions with known intervention targets. iCITRIS identifies the causal factors from temporal observations, while simultaneously using a differentiable causal discovery method to learn their causal graph. In experiments on three video datasets, iCITRIS accurately identifies the causal factors and their causal graph.
翻译:最近的工作表明,我们可以根据时间序列的观察来重建因果变量,假设它们之间没有即时因果关系。然而,在实际应用中,我们的衡量率或框架率可能比许多因果效果慢。这实际上造成了“即时”效应,使先前的可识别性结果失效。为了解决这一问题,我们提议了iCITRIS, 这是一种因果代表学习方法,在对已知干预目标进行完美干预时,可以处理时间序列的瞬时效应。 iCITRIS从时间序列中找出因果因素,同时使用不同的因果发现方法来了解其因果图。在三个视频数据集的实验中,iCITRIS准确地确定了因果因素及其因果图。