Statistical Criteria for Selecting the Optimal Number of Untreated Subjects Matched to Each Treated Subject When Using Many-to-One Matching on the Propensity Score
Institute for Clinical Evaluative Sciences
Abstract
Propensity-score matching is increasingly being used to estimate the effects of treatments using observational data. In many-to-one (M:1) matching on the propensity score, M untreated subjects are matched to each treated subject using the propensity score. The authors used Monte Carlo simulations to examine the effect of the choice of M on the statistical performance of matched estimators. They considered matching 1-5 untreated subjects to each treated subject using both nearest-neighbor matching and caliper matching in 96 different scenarios. Increasing the number of untreated subjects matched to each treated subject tended to increase the bias in the estimated treatment effect; conversely, increasing the…
Citation impact
- FWCI
- 8.73
- Percentile
- 100%
- References
- 55
Authors
1Topics & keywords
- Propensity score matching
- Matching (statistics)
- Statistics
- Estimator
- Mathematics
- Average treatment effect
- Mean squared error
- Observational study
- Good health and well-being