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Deep Structural Causal Models for Tractable Counterfactual Inference

Neural Information Processing Systems

We formulate a general framework for building structural causal models (SCMs) with deep learning components. The proposed approach employs normalising flows and variational inference to enable tractable inference of exogenous noise variables - a crucial step for counterfactual inference that is missing from existing deep causal learning methods. Our framework is validated on a synthetic dataset built on MNIST as well as on a real-world medical dataset of brain MRI scans. Our experimental results indicate that we can successfully train deep SCMs that are capable of all three levels of Pearl's ladder of causation: association, intervention, and counterfactuals, giving rise to a powerful new approach for answering causal questions in imaging applications and beyond.


Review for NeurIPS paper: Deep Structural Causal Models for Tractable Counterfactual Inference

Neural Information Processing Systems

POST REBUTTAL -- I have read the authors' responses and other reviewers' comments. Unfortunately, some of my primary concerns have not been addressed, which I will elaborate on below. This paper studies the implementation of Pearl's in a SCM, where each of its functions is represented as a neural network. The authors claim that the proposed approaches "are capable of all three levels of Pearl's ladder of causation: association, intervention, and counterfactuals giving rise to a powerful new approach for answering causal questions in imaging applications and beyond." However, I believe the significance of its contributions to the causal inference literature is a bit overstated. In particular, the authors assume that detailed parameterization of the target SCM is *precisely known*.


Review for NeurIPS paper: Deep Structural Causal Models for Tractable Counterfactual Inference

Neural Information Processing Systems

The reviewers agree on the whole that this work addresses an important problem and that the paper makes sound, well-supported claims. The rebuttal did a good job at clarifying the scope of their work, largely improving the scores of the reviewers. I urge the authors to carefully update the paper to address the reviewers concerns in the final version. Examples of what to improve include: - Description of the "intervention vs counterfactual" distinction. One reviewer recommends: "since it is key for the paper's novelty claim I think this distinction needs a little more explanation, perhaps through a simple example" - Engage with the existing literature on causal inference.


Deep Structural Causal Models for Tractable Counterfactual Inference

Neural Information Processing Systems

We formulate a general framework for building structural causal models (SCMs) with deep learning components. The proposed approach employs normalising flows and variational inference to enable tractable inference of exogenous noise variables - a crucial step for counterfactual inference that is missing from existing deep causal learning methods. Our framework is validated on a synthetic dataset built on MNIST as well as on a real-world medical dataset of brain MRI scans. Our experimental results indicate that we can successfully train deep SCMs that are capable of all three levels of Pearl's ladder of causation: association, intervention, and counterfactuals, giving rise to a powerful new approach for answering causal questions in imaging applications and beyond.


r/MachineLearning - [R] Deep Structural Causal Models for Tractable Counterfactual Inference

#artificialintelligence

Abstract: We formulate a general framework for building structural causal models (SCMs) with deep learning components. The proposed approach employs normalising flows and variational inference to enable tractable inference of exogenous noise variables - a crucial step for counterfactual inference that is missing from existing deep causal learning methods. Our framework is validated on a synthetic dataset built on MNIST as well as on a real-world medical dataset of brain MRI scans. Our experimental results indicate that we can successfully train deep SCMs that are capable of all three levels of Pearl's ladder of causation: association, intervention, and counterfactuals, giving rise to a powerful new approach for answering causal questions in imaging applications and beyond. The code for all our experiments is available at this https URL.