Evaluation of Induced Expert Knowledge in Causal Structure Learning by NOTEARS

Jawad Chowdhury, Rezaur Rashid, G. Terejanu
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引用次数: 3

Abstract

Causal modeling provides us with powerful counterfactual reasoning and interventional mechanism to generate predictions and reason under various what-if scenarios. However, causal discovery using observation data remains a nontrivial task due to unobserved confounding factors, finite sampling, and changes in the data distribution. These can lead to spurious cause-effect relationships. To mitigate these challenges in practice, researchers augment causal learning with known causal relations. The goal of the paper is to study the impact of expert knowledge on causal relations in the form of additional constraints used in the formulation of the nonparametric NOTEARS. We provide a comprehensive set of comparative analyses of biasing the model using different types of knowledge. We found that (i) knowledge that corrects the mistakes of the NOTEARS model can lead to statistically significant improvements, (ii) constraints on active edges have a larger positive impact on causal discovery than inactive edges, and surprisingly, (iii) the induced knowledge does not correct on average more incorrect active and/or inactive edges than expected. We also demonstrate the behavior of the model and the effectiveness of domain knowledge on a real-world dataset.
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NOTEARS对因果结构学习中诱导专家知识的评价
因果模型为我们提供了强大的反事实推理和干预机制,在各种假设情景下产生预测和推理。然而,由于未观察到的混杂因素、有限的抽样和数据分布的变化,使用观测数据进行因果发现仍然是一项艰巨的任务。这些可能导致虚假的因果关系。为了在实践中减轻这些挑战,研究人员用已知的因果关系来增强因果学习。本文的目的是研究专家知识对非参数NOTEARS公式中附加约束形式的因果关系的影响。我们提供了一套全面的比较分析,使用不同类型的知识来偏置模型。我们发现(i)纠正NOTEARS模型错误的知识可以导致统计上显着的改进,(ii)对活动边的约束比非活动边对因果发现有更大的积极影响,令人惊讶的是,(iii)诱导知识平均没有纠正比预期更多的不正确的活动和/或非活动边。我们还展示了模型的行为和领域知识在真实数据集上的有效性。
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