Semi-supervised Learning of Visual Causal Macrovariables

Aruna Jammalamadaka, Lingyi Zhang, Joseph Comer, Sasha Strelnikoff, R. Mustari, Tsai-Ching Lu, Rajan Bhattacharyya
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Abstract

Discovery of causally related concepts is one of the key challenges in extracting knowledge from observational data. Lower-dimensional “causal macrovariables” represent concepts which preserve all relevant causal information in high-dimensional systems. Existing causal macrovariable discovery algorithms are limited by assumptions about known and controllable interventions. We propose a variational autoencoder-inspired architecture with regularization terms for semi-supervised causal macrovariable discovery. These terms impose domain knowledge regarding visual causal concepts to differentiate between correlation and causation. Experiments on both synthetic and real-world datasets with known causal dynamics show that our method can discover more concise and precise causal macrovariables than unsupervised methods.
视觉因果宏变量的半监督学习
发现因果相关的概念是从观测数据中提取知识的关键挑战之一。较低维度的“因果宏观变量”表示在高维系统中保留所有相关因果信息的概念。现有的因果宏观变量发现算法受到已知和可控干预假设的限制。我们提出了一种具有正则化项的变分自编码器启发架构,用于半监督因果宏观变量发现。这些术语强加了关于视觉因果概念的领域知识,以区分相关性和因果关系。在已知因果动力学的合成和现实数据集上的实验表明,我们的方法比无监督方法可以发现更简洁和精确的因果宏观变量。
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