Controlling for Unmeasured Confounding in Panel Data Using Minimal Bridge Functions: From Two-Way Fixed Effects to Factor Models

08/09/2021
by   Guido Imbens, et al.
0

We develop a new approach for identifying and estimating average causal effects in panel data under a linear factor model with unmeasured confounders. Compared to other methods tackling factor models such as synthetic controls and matrix completion, our method does not require the number of time periods to grow infinitely. Instead, we draw inspiration from the two-way fixed effect model as a special case of the linear factor model, where a simple difference-in-differences transformation identifies the effect. We show that analogous, albeit more complex, transformations exist in the more general linear factor model, providing a new means to identify the effect in that model. In fact many such transformations exist, called bridge functions, all identifying the same causal effect estimand. This poses a unique challenge for estimation and inference, which we solve by targeting the minimal bridge function using a regularized estimation approach. We prove that our resulting average causal effect estimator is root-N consistent and asymptotically normal, and we provide asymptotically valid confidence intervals. Finally, we provide extensions for the case of a linear factor model with time-varying unmeasured confounders.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
08/02/2022

Doubly Robust Proximal Causal Inference under Confounded Outcome-Dependent Sampling

Unmeasured confounding and selection bias are often of concern in observ...
research
12/15/2020

Inference of Causal Effects when Adjustment Sets are Unknown

Conventional methods in causal effect inference typically rely on specif...
research
07/02/2021

A Practical Guide to Counterfactual Estimators for Causal Inference with Time-Series Cross-Sectional Data

This paper introduces a unified framework of counterfactual estimation f...
research
05/03/2021

Identification and Estimation of Average Marginal Effects in Fixed Effects Logit Models

This article considers average marginal effects (AME) in a panel data fi...
research
05/02/2019

Sparsity Double Robust Inference of Average Treatment Effects

Many popular methods for building confidence intervals on causal effects...
research
10/29/2022

Bias of the additive hazard model in the presence of causal effect heterogeneity

Hazard ratios are prone to selection bias, compromising their use as cau...
research
06/03/2022

Bayesian and Frequentist Inference for Synthetic Controls

The synthetic control method has become a widely popular tool to estimat...

Please sign up or login with your details

Forgot password? Click here to reset