MatchIt: Nonparametric Preprocessing for Parametric Causal Inference
Daniel E. Ho, Kosuke Imai, Gary King, Elizabeth A. Stuart. 2011.
"MatchIt: Nonparametric Preprocessing for Parametric Causal Inference".
Journal of Statistical Software, 42, 8, Pp. 1-28.
Abstract
MatchIt implements the suggestions of Ho, Imai, King, and Stuart (2007) for improving parametric statistical models by preprocessing data with nonparametric matching methods. MatchIt implements a wide range of sophisticated matching methods, making it possible to greatly reduce the dependence of causal inferences on hard-to-justify, but commonly made, statistical modeling assumptions. The software also easily fits into existing research practices since, after preprocessing data with MatchIt, researchers can use whatever parametric model they would have used without MatchIt, but produce inferences with substantially more robustness and less sensitivity to modeling assumptions. MatchIt is an R program, and also works seamlessly with Zelig.
See Also
- [Paper] A Theory of Statistical Inference for Matching Methods in Causal Research (2019)
- [Paper] Causal Inference Without Balance Checking: Coarsened Exact Matching (2012)
- [Paper] CEM: Coarsened Exact Matching in Stata (2009)
- [Paper] CEM: Software for Coarsened Exact Matching (2009)
- [Paper] Comparative Effectiveness of Matching Methods for Causal Inference (2011)
- [Paper] Matching As Nonparametric Preprocessing for Reducing Model Dependence in Parametric Causal Inference (2007)
- [Paper] Multivariate Matching Methods That Are Monotonic Imbalance Bounding (2011)
- [Paper] The Balance-Sample Size Frontier in Matching Methods for Causal Inference (2017)