Average treatment effect on the treated, under lack of positivity

09/04/2023
by   YI LIU, et al.
0

The use of propensity score (PS) methods has become ubiquitous in causal inference. At the heart of these methods is the positivity assumption. Violation of the positivity assumption leads to the presence of extreme PS weights when estimating average causal effects of interest, such as the average treatment effect (ATE) or the average treatment effect on the treated (ATT), which renders invalid related statistical inference. To circumvent this issue, trimming or truncating the extreme estimated PSs have been widely used. However, these methods require that we specify a priori a threshold and sometimes an additional smoothing parameter. While there are a number of methods dealing with the lack of positivity when estimating ATE, surprisingly there is no much effort in the same issue for ATT. In this paper, we first review widely used methods, such as trimming and truncation in ATT. We emphasize the underlying intuition behind these methods to better understand their applications and highlight their main limitations. Then, we argue that the current methods simply target estimands that are scaled ATT (and thus move the goalpost to a different target of interest), where we specify the scale and the target populations. We further propose a PS weight-based alternative for the average causal effect on the treated, called overlap weighted average treatment effect on the treated (OWATT). The appeal of our proposed method lies in its ability to obtain similar or even better results than trimming and truncation while relaxing the constraint to choose a priori a threshold (or even specify a smoothing parameter). The performance of the proposed method is illustrated via a series of Monte Carlo simulations and a data analysis on racial disparities in health care expenditures.

READ FULL TEXT
research
10/04/2022

Using Balancing Weights to Target the Treatment Effect on the Treated when Overlap is Poor

Inverse probability weights are commonly used in epidemiology to estimat...
research
10/24/2022

Overlap, matching, or entropy weights: what are we weighting for?

There has been a recent surge in statistical methods for handling the la...
research
07/30/2019

Incremental causal effects

This is a draft. The ignorability assumption is a key assumption in caus...
research
11/03/2020

A framework for causal inference in the presence of extreme inverse probability weights: the role of overlap weights

In this paper, we consider recent progress in estimating the average tre...
research
06/13/2023

ACE: Active Learning for Causal Inference with Expensive Experiments

Experiments are the gold standard for causal inference. In many applicat...
research
06/27/2021

A Generalizability Score for Aggregate Causal Effect

Scientists frequently generalize population level causal quantities such...
research
08/31/2018

The Causal Effect of Answer Changing on Multiple-Choice Items

The causal effect of changing initial answers on final scores is a long-...

Please sign up or login with your details

Forgot password? Click here to reset