Instrumental Variables in Causal Inference and Machine Learning: A Survey
Anpeng Wu, Kun Kuang, Ruoxuan Xiong, Fei Wu

TL;DR
This survey comprehensively reviews Instrumental Variables methods in causal inference and machine learning, covering theoretical foundations, recent developments, applications, datasets, and future research directions.
Contribution
First systematic and comprehensive survey of IV methods in causal inference and machine learning, including categorization, applications, and a toolkit for practitioners.
Findings
Categorization of IV methods into three main streams.
Discussion of classical and recent IV methods in machine learning.
Identification of open problems and future research directions.
Abstract
Causal inference is the process of using assumptions, study designs, and estimation strategies to draw conclusions about the causal relationships between variables based on data. This allows researchers to better understand the underlying mechanisms at work in complex systems and make more informed decisions. In many settings, we may not fully observe all the confounders that affect both the treatment and outcome variables, complicating the estimation of causal effects. To address this problem, a growing literature in both causal inference and machine learning proposes to use Instrumental Variables (IV). This paper serves as the first effort to systematically and comprehensively introduce and discuss the IV methods and their applications in both causal inference and machine learning. First, we provide the formal definition of IVs and discuss the identification problem of IV regression…
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Taxonomy
TopicsAdvanced Causal Inference Techniques
