Abstract

Learning causal effects from observational data greatly benefits a variety of domains such as health care, education, and sociology. For instance, one could estimate the impact of a new drug on specific individuals to assist clinical planning and improve the survival rate. In this paper, we focus on studying the problem of estimating the Conditional Average Treatment Effect (CATE) from observational data. The challenges for this problem are two-fold: on the one hand, we have to derive a causal estimator to estimate the causal quantity from observational data, in the presence of confounding bias; on the other hand, we have to deal with the identification of the CATE when the distributions of covariates over the treatment group units and the control units are imbalanced. To overcome these challenges, we propose a neural network framework called Adversarial Balancing-based representation learning for Causal Effect Inference (ABCEI), based on recent advances in representation learning. To ensure the identification of the CATE, ABCEI uses adversarial learning to balance the distributions of covariates in the treatment and the control group in the latent representation space, without any assumptions on the form of the treatment selection/assignment function. In addition, during the representation learning and balancing process, highly predictive information from the original covariate space might be lost. ABCEI can tackle this information loss problem by preserving useful information for predicting causal effects under the regularization of a mutual information estimator. The experimental results show that ABCEI is robust against treatment selection bias, and matches/outperforms the state-of-the-art approaches. Our experiments show promising results on several datasets, encompassing several health care (and other) domains.

Highlights

  • Many domains of science require inference of causal effects, including healthcare (Casucci et al 2017, 2019), economics and marketing (LaLonde 1986; Smith and Todd 2005), sociology (Morgan and Harding 2006), and education (Zhao and Heffernan 2017)

  • We show three visualizations: the left column displays the t-SNE visualizations in the original covariate space, the middle column illustrates the representations learned by ABCEI, and the right column illustrates the representations learned by CFR-Wass

  • We propose a novel model for causal effect inference with observational data, called ABCEI, which is built on deep representation learning methods

Read more

Summary

Introduction

Many domains of science require inference of causal effects, including healthcare (Casucci et al 2017, 2019), economics and marketing (LaLonde 1986; Smith and Todd 2005), sociology (Morgan and Harding 2006), and education (Zhao and Heffernan 2017). Due to the broad application of machine learning models in these domains, properly estimating causal effects is an important task for machine learning research. The classical method to estimate causal effects is Randomized Controlled Trials (RCTs) (Autier and Gandini 2007), where one must maintain two statistically identical groups, randomly assign treatments to each individual, and observe the outcomes. Causal effect inference through observational studies is needed (Benson and Hartz 2000). The core issue of causal effect inference from observational data is the identification problem. That is: given a set of assumptions and non-experimental data, is it possible to derive a model that can correctly estimate the strength of a causal effect by certain quantities?

Objectives
Methods
Results
Conclusion
Full Text
Paper version not known

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call

Disclaimer: All third-party content on this website/platform is and will remain the property of their respective owners and is provided on "as is" basis without any warranties, express or implied. Use of third-party content does not indicate any affiliation, sponsorship with or endorsement by them. Any references to third-party content is to identify the corresponding services and shall be considered fair use under The CopyrightLaw.