This paper addresses the use of neural networks for the estimation of
treatment effects from observational data. Generally, estimation proceeds in
two stages. First, we fit models for the expected outcome and the probability
of treatment (propensity score) for each unit. Second, we plug these fitted
models into a downstream estimator of the effect. Neural networks are a natural
choice for the models in the first step. The question we address is: how can we
adapt the design and training of the neural networks used in the first step in
order to improve the quality of the final estimate of the treatment effect? We
propose two adaptations based on insights from the statistical literature on
the estimation of treatment effects. The first is a new architecture, the
Dragonnet, that exploits the sufficiency of the propensity score for estimation
adjustment. The second is a regularization procedure, targeted regularization,
that induces a bias towards models that have non-parametrically optimal
asymptotic properties `out-of-the-box`. Studies on benchmark datasets for
causal inference show these adaptations outperform existing methods. Code is
available at github.com/claudiashi57/dragonnet
%0 Journal Article
%1 shi2019adapting
%A Shi, Claudia
%A Blei, David M.
%A Veitch, Victor
%D 2019
%K causal-analysis
%T Adapting Neural Networks for the Estimation of Treatment Effects
%U http://arxiv.org/abs/1906.02120
%X This paper addresses the use of neural networks for the estimation of
treatment effects from observational data. Generally, estimation proceeds in
two stages. First, we fit models for the expected outcome and the probability
of treatment (propensity score) for each unit. Second, we plug these fitted
models into a downstream estimator of the effect. Neural networks are a natural
choice for the models in the first step. The question we address is: how can we
adapt the design and training of the neural networks used in the first step in
order to improve the quality of the final estimate of the treatment effect? We
propose two adaptations based on insights from the statistical literature on
the estimation of treatment effects. The first is a new architecture, the
Dragonnet, that exploits the sufficiency of the propensity score for estimation
adjustment. The second is a regularization procedure, targeted regularization,
that induces a bias towards models that have non-parametrically optimal
asymptotic properties `out-of-the-box`. Studies on benchmark datasets for
causal inference show these adaptations outperform existing methods. Code is
available at github.com/claudiashi57/dragonnet
@article{shi2019adapting,
abstract = {This paper addresses the use of neural networks for the estimation of
treatment effects from observational data. Generally, estimation proceeds in
two stages. First, we fit models for the expected outcome and the probability
of treatment (propensity score) for each unit. Second, we plug these fitted
models into a downstream estimator of the effect. Neural networks are a natural
choice for the models in the first step. The question we address is: how can we
adapt the design and training of the neural networks used in the first step in
order to improve the quality of the final estimate of the treatment effect? We
propose two adaptations based on insights from the statistical literature on
the estimation of treatment effects. The first is a new architecture, the
Dragonnet, that exploits the sufficiency of the propensity score for estimation
adjustment. The second is a regularization procedure, targeted regularization,
that induces a bias towards models that have non-parametrically optimal
asymptotic properties `out-of-the-box`. Studies on benchmark datasets for
causal inference show these adaptations outperform existing methods. Code is
available at github.com/claudiashi57/dragonnet},
added-at = {2019-06-19T15:32:50.000+0200},
author = {Shi, Claudia and Blei, David M. and Veitch, Victor},
biburl = {https://www.bibsonomy.org/bibtex/26e1050a50714ac7e3a59af576bc4e45f/kirk86},
interhash = {c2467dbee1ee990ef92e2f95fee5d74d},
intrahash = {6e1050a50714ac7e3a59af576bc4e45f},
keywords = {causal-analysis},
note = {cite arxiv:1906.02120},
timestamp = {2019-06-19T15:32:50.000+0200},
title = {Adapting Neural Networks for the Estimation of Treatment Effects},
url = {http://arxiv.org/abs/1906.02120},
year = 2019
}