We address a major discrepancy in matching methods for causal inference in observational data. Since these data are typically plentiful, the goal of matching is to reduce bias and only secondarily to keep variance low. However, most matching methods seem designed for the opposite problem, guaranteeing sample size ex ante but limiting bias by controlling for covariates through reductions in the imbalance between treated and control groups only ex post and only sometimes. (The resulting practical difficulty may explain why many published applications do not check whether imbalance was reduced and so may not even be decreasing bias.) We introduce a new class of “Monotonic Imbalance Bounding” (MIB) matching methods that enables one to choose a fixed level of maximum imbalance, or to reduce maximum imbalance for one variable without changing it for the others. We then discuss a specific MIB method called “Coarsened Exact Matching” (CEM) which, unlike most existing approaches, also explicitly bounds through ex ante user choice both the degree of model dependence and the causal effect estimation error, eliminates the needfor a separate procedure to restrict data to common support, meets the congruence principle, is approximately invariant to measurement error, works well with modern methods of imputation for missing data, is computationally efficient even with massive data sets, and is easy to understand and use. This method can improve causal inferences in a wide range of applications, and may be referred for simplicity of use even when it is possible to design superior methods for particular problems. We also make available open source software for R and Stata which implements all our suggestions

CEM : software for coarsened exact matching / S.M. Iacus, G. King, G. Porro. - Rochester (NY) : Social science electronic publishing, 2008.

CEM : software for coarsened exact matching

S.M. Iacus
Primo
;
2008

Abstract

We address a major discrepancy in matching methods for causal inference in observational data. Since these data are typically plentiful, the goal of matching is to reduce bias and only secondarily to keep variance low. However, most matching methods seem designed for the opposite problem, guaranteeing sample size ex ante but limiting bias by controlling for covariates through reductions in the imbalance between treated and control groups only ex post and only sometimes. (The resulting practical difficulty may explain why many published applications do not check whether imbalance was reduced and so may not even be decreasing bias.) We introduce a new class of “Monotonic Imbalance Bounding” (MIB) matching methods that enables one to choose a fixed level of maximum imbalance, or to reduce maximum imbalance for one variable without changing it for the others. We then discuss a specific MIB method called “Coarsened Exact Matching” (CEM) which, unlike most existing approaches, also explicitly bounds through ex ante user choice both the degree of model dependence and the causal effect estimation error, eliminates the needfor a separate procedure to restrict data to common support, meets the congruence principle, is approximately invariant to measurement error, works well with modern methods of imputation for missing data, is computationally efficient even with massive data sets, and is easy to understand and use. This method can improve causal inferences in a wide range of applications, and may be referred for simplicity of use even when it is possible to design superior methods for particular problems. We also make available open source software for R and Stata which implements all our suggestions
2008
Settore MAT/06 - Probabilita' e Statistica Matematica
http://gking.harvard.edu/cem/docs/cem.pdf
Working Paper
CEM : software for coarsened exact matching / S.M. Iacus, G. King, G. Porro. - Rochester (NY) : Social science electronic publishing, 2008.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2434/53005
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