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Impact Evaluation Using Analysis of Covariance With Error-Prone Covariates That Violate Surrogacy.

J R LockwoodDaniel F McCaffrey
Published in: Evaluation review (2019)
The article derives asymptotic results for ANCOVA with error-prone covariates that cover a variety of cases relevant to applications. It then uses the results in a case study of choosing among ANCOVA model specifications for estimating teacher effects using longitudinal data from a large urban school system. It finds evidence that estimates of teacher effects computed using EIV regression may have smaller bias than estimates computed using OLS regression when the data available for adjusting for students' prior achievement are limited.
Keyphrases
  • electronic health record
  • mental health
  • big data
  • machine learning
  • deep learning