Adjusting Treatment Effect Estimates by Post-Stratification in Randomized Experiments

Abstract

Experimenters often use post-stratification to adjust estimates. Post-stratification is akin to blocking, except that the number of treated units in each stratum is a random variable because stratification occurs after treatment assignment. We analyse both post-stratification and blocking under the Neyman–Rubin model and compare the efficiency of these designs. We derive the variances for a post-stratified estimator and a simple difference-in-means estimator under different randomization schemes. Post-stratification is nearly as efficient as blocking: the difference in their variances is of the order of 1/n2, with a constant depending on treatment proportion. Post-stratification is therefore a reasonable alternative to blocking when blocking is not feasible. However, in finite samples, post-stratification can increase variance if the number of strata is large and the strata are poorly chosen. To examine why the estimators’ variances are different, we extend our results by conditioning on the observed number of treated units in each stratum. Conditioning also provides more accurate variance estimates because it takes into account how close (or far) a realized random sample is from a comparable blocked experiment. We then show that the practical substance of our results remains under an infinite population sampling model. Finally, we provide an analysis of an actual experiment to illustrate our analytical results.

Document Details

Document Type
Pub Defense Publication
Publication Date
Dec 04, 2012
Source ID
10.1111/j.1467-9868.2012.01048.x

Entities

People

  • Bin Yu
  • Jasjeet S. Sekhon
  • Luke W. Miratrix

Organizations

  • Army Research Office
  • Harvard University
  • National Science Foundation
  • University of California, Berkeley

Tags

Fields of Study

  • Mathematics

Readers

  • Applied Combinatorial Optimization and Logic Circuit Design.
  • Geotechnical Engineering.
  • Statistical inference.