Deep Learning With DAGs
- URL: http://arxiv.org/abs/2401.06864v1
- Date: Fri, 12 Jan 2024 19:35:54 GMT
- Title: Deep Learning With DAGs
- Authors: Sourabh Balgi, Adel Daoud, Jose M. Pe\~na, Geoffrey T. Wodtke and
Jesse Zhou
- Abstract summary: We introduce causal-graphical normalizing flows (cGNFs) to empirically evaluate theories represented as directed acyclic graphs (DAGs)
Unlike conventional approaches, cGNFs model the full joint distribution of the data according to a DAG supplied by the analyst.
- Score: 5.199807441687141
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Social science theories often postulate causal relationships among a set of
variables or events. Although directed acyclic graphs (DAGs) are increasingly
used to represent these theories, their full potential has not yet been
realized in practice. As non-parametric causal models, DAGs require no
assumptions about the functional form of the hypothesized relationships.
Nevertheless, to simplify the task of empirical evaluation, researchers tend to
invoke such assumptions anyway, even though they are typically arbitrary and do
not reflect any theoretical content or prior knowledge. Moreover, functional
form assumptions can engender bias, whenever they fail to accurately capture
the complexity of the causal system under investigation. In this article, we
introduce causal-graphical normalizing flows (cGNFs), a novel approach to
causal inference that leverages deep neural networks to empirically evaluate
theories represented as DAGs. Unlike conventional approaches, cGNFs model the
full joint distribution of the data according to a DAG supplied by the analyst,
without relying on stringent assumptions about functional form. In this way,
the method allows for flexible, semi-parametric estimation of any causal
estimand that can be identified from the DAG, including total effects,
conditional effects, direct and indirect effects, and path-specific effects. We
illustrate the method with a reanalysis of Blau and Duncan's (1967) model of
status attainment and Zhou's (2019) model of conditional versus controlled
mobility. To facilitate adoption, we provide open-source software together with
a series of online tutorials for implementing cGNFs. The article concludes with
a discussion of current limitations and directions for future development.
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