We introduce a new "Monotonic Imbalance Bounding" (MIB) class of matching methods for causal inference with a surprisingly large number of attractive statistical properties. MIB generalizes and extends in several new directions the only existing class, "Equal Percent Bias Reducing" (EPBR), which is designed to satisfy weaker properties and only in expectation. We also offer strategies to obtain specific members of the MIB class, and analyze in more detail a member of this class, called Coarsened Exact Matching, whose properties we analyze from this new perspective. We offer a variety of analytical results and numerical simulations that demonstrate how members of the MIB class can dramatically improve inferences relative to EPBR-based matchi...
In this article, we introduce a Stata implementation of coarsened exact matching, a new method for i...
We propose a simplified approach to matching for causal inference that simultaneously optimizes both...
This program is designed to improve causal inference via a method of matching that is widely applica...
We introduce a new "Monotonic Imbalance Bounding" (MIB) class of matching methods for causal inferen...
We introduce a new "Monotonic Imbalance Bounding" (MIB) class of matching methods for causal inferen...
We discuss a method for improving causal inferences called "Coarsened Exact Matching" (CEM), and the...
We discuss a method for improving causal inferences called ‘‘Coarsened Exact Matching’’ (CEM), and t...
We discuss a method for improving causal inferences called "Coarsened Exact Matching'' (CEM), and th...
We discuss a method for improving causal inferences called ‘‘Coarsened Exact Matching’ ’ (CEM), and ...
We address a major discrepancy in matching methods for causal inference in observational data. Sinc...
This program is designed to improve the estimation of causal effects via an extremely powerful metho...
We propose a simplified approach to matching for causal inference that simultaneously optimizes bala...
Matching on covariates is a well-established framework for estimating causal effects in observationa...
In this article, we introduce a Stata implementation of coarsened exact matching, a new method for i...
In this article, we introduce a Stata implementation of coarsened exact matching, a new method for i...
We propose a simplified approach to matching for causal inference that simultaneously optimizes both...
This program is designed to improve causal inference via a method of matching that is widely applica...
We introduce a new "Monotonic Imbalance Bounding" (MIB) class of matching methods for causal inferen...
We introduce a new "Monotonic Imbalance Bounding" (MIB) class of matching methods for causal inferen...
We discuss a method for improving causal inferences called "Coarsened Exact Matching" (CEM), and the...
We discuss a method for improving causal inferences called ‘‘Coarsened Exact Matching’’ (CEM), and t...
We discuss a method for improving causal inferences called "Coarsened Exact Matching'' (CEM), and th...
We discuss a method for improving causal inferences called ‘‘Coarsened Exact Matching’ ’ (CEM), and ...
We address a major discrepancy in matching methods for causal inference in observational data. Sinc...
This program is designed to improve the estimation of causal effects via an extremely powerful metho...
We propose a simplified approach to matching for causal inference that simultaneously optimizes bala...
Matching on covariates is a well-established framework for estimating causal effects in observationa...
In this article, we introduce a Stata implementation of coarsened exact matching, a new method for i...
In this article, we introduce a Stata implementation of coarsened exact matching, a new method for i...
We propose a simplified approach to matching for causal inference that simultaneously optimizes both...
This program is designed to improve causal inference via a method of matching that is widely applica...