Active & Passive Causal Inference: Introduction

TMLR Paper1833 Authors

15 Nov 2023 (modified: 31 Mar 2024)Rejected by TMLREveryoneRevisionsBibTeX
Abstract: This paper serves as a starting point for machine learning researchers, engineers and students who are interested in but not yet familiar with causal inference. We start by laying out an important set of assumptions that are collectively needed for causal identification, such as exchangeability, positivity, consistency and the absence of interference. From these assumptions, we build out a set of important causal inference techniques, which we do so by categorizing them into two buckets; active and passive approaches. We describe and discuss randomized controlled trials and bandit-based approaches from the active category. We then describe classical approaches, such as matching and inverse probability weighting, in the passive category, followed by more recent deep learning based algorithms. By finishing the paper with some of the missing aspects of causal inference from the paper, such as collider biases, we expect this paper to provide readers with a diverse set of starting points for further reading and research in causal inference and discovery.
Submission Length: Long submission (more than 12 pages of main content)
Assigned Action Editor: ~Hanwang_Zhang3
Submission Number: 1833
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