Matching Estimators for Causal Effects of Multiple Treatments

09/01/2018
by   Anthony D. Scotina, et al.
0

Matching estimators for average treatment effects are widely used in the binary treatment setting, in which missing potential outcomes are imputed as the average of observed outcomes of all matches for each unit. With more than two treatment groups, however, estimation using matching requires additional techniques. In this paper, we propose a nearest-neighbors matching estimator for use with multiple, nominal treatments, and use simulations to show that this method is precise and has coverage levels that are close to nominal.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
02/07/2022

Causal inference from treatment-control studies having an additional factor with unknown assignment mechanism

Consider a situation with two treatments, the first of which is randomiz...
research
01/21/2021

Estimating Average Treatment Effects via Orthogonal Regularization

Decision-making often requires accurate estimation of treatment effects ...
research
06/09/2021

On Estimating Multiple Treatment Effects with Regression

We study the causal interpretation of regressions on multiple dependent ...
research
09/09/2019

Estimation of Personalized Heterogeneous Treatment Effects Using Concatenation and Augmentation of Feature Vectors

A new meta-algorithm for estimating the conditional average treatment ef...
research
09/23/2021

Treatment Effects in Market Equilibrium

In evaluating social programs, it is important to measure treatment effe...
research
05/21/2018

Multiple Treatments with Strategic Interaction

We develop an empirical framework in which we identify and estimate the ...
research
04/12/2020

Complex Discontinuity Designs Using Covariates

Regression discontinuity designs are extensively used for causal inferen...

Please sign up or login with your details

Forgot password? Click here to reset