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[R] DoWhy-GCM: An extension of DoWhy for causal inference in graphical causal models
June 21, 2022, 10:39 a.m. | /u/bikeskata
Machine Learning www.reddit.com
We introduce DoWhy-GCM, an extension of the DoWhy Python library, that leverages graphical causal models. Unlike existing causality libraries, which mainly focus on effect estimation questions, with DoWhy-GCM, users can ask a wide range of additional causal questions, such as identifying the root causes of outliers and distributional changes, causal structure learning, attributing causal influences, and diagnosis of causal structures. To this end, DoWhy-GCM users first model cause-effect relations between variables in a system under study through a graphical …
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