Navigating causal deep learning
Jeroen Berrevoets, Krzysztof Kacprzyk, Zhaozhi Qian, Mihaela van der, Schaar

TL;DR
This paper provides a structured categorization and mapping of causal deep learning methods, helping researchers compare, benchmark, and identify gaps in this rapidly evolving field.
Contribution
It introduces a comprehensive map of causal deep learning methods beyond Pearl's ladder, incorporating parametric assumptions and covering multiple machine learning disciplines.
Findings
Refined the ladder of causation for CDL methods
Developed a map categorizing methods by assumptions and disciplines
Open-sourced the map for community use
Abstract
Causal deep learning (CDL) is a new and important research area in the larger field of machine learning. With CDL, researchers aim to structure and encode causal knowledge in the extremely flexible representation space of deep learning models. Doing so will lead to more informed, robust, and general predictions and inference -- which is important! However, CDL is still in its infancy. For example, it is not clear how we ought to compare different methods as they are so different in their output, the way they encode causal knowledge, or even how they represent this knowledge. This is a living paper that categorises methods in causal deep learning beyond Pearl's ladder of causation. We refine the rungs in Pearl's ladder, while also adding a separate dimension that categorises the parametric assumptions of both input and representation, arriving at the map of causal deep learning. Our map…
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Taxonomy
TopicsBayesian Modeling and Causal Inference · Explainable Artificial Intelligence (XAI) · Domain Adaptation and Few-Shot Learning
