LGMEJun 30, 2022

Causal Machine Learning: A Survey and Open Problems

arXiv:2206.15475v2161 citationsh-index: 69
Originality Synthesis-oriented
AI Analysis

It provides a comprehensive overview for researchers in ML/AI, but is incremental as a survey.

This paper surveys Causal Machine Learning (CausalML), categorizing methods into five groups and reviewing applications across domains, while identifying open problems and benchmarks in the field.

Causal Machine Learning (CausalML) is an umbrella term for machine learning methods that formalize the data-generation process as a structural causal model (SCM). This perspective enables us to reason about the effects of changes to this process (interventions) and what would have happened in hindsight (counterfactuals). We categorize work in CausalML into five groups according to the problems they address: (1) causal supervised learning, (2) causal generative modeling, (3) causal explanations, (4) causal fairness, and (5) causal reinforcement learning. We systematically compare the methods in each category and point out open problems. Further, we review data-modality-specific applications in computer vision, natural language processing, and graph representation learning. Finally, we provide an overview of causal benchmarks and a critical discussion of the state of this nascent field, including recommendations for future work.

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