In this paper we introduce the Random Recursive Partitioning (RRP) matching method. RRP generates a proximity matrix which might be useful in econometric applications like average treatment effect estimation. RRP is a Monte Carlo method that randomly generates non-empty recursive partitions of the data and evaluates the proximity between two observations as the empirical frequency they fall in a same cell of these random partitions over all Monte Carlo replications. From the proximity matrix it is possible to derive both graphical and analytical tools to evaluate the extent of the common support between data sets. The RRP method is \u201chonest\u201d in that it does not match observations \u201cat any cost\u201d: if data sets are separated,...
We compare propensity-score matching methods with covariate matching estimators. We first discuss th...
Matching estimators for average treatment effects are widely used in evaluation research despite the...
Researchers who generate data often optimize efficiency and robustness by choosing stratified over s...
In this paper we introduce the Random Recursive Partitioning (RRP) matching method. RRP generates a ...
In this paper we introduce the Random Recursive Partitioning (RRP) matching method. RRP generates a ...
Applications of the random recursive partitioning (RRP) method are described. This method generates ...
Applications of the random recursive partitioning (RRP) method are described. This method generates ...
A new matching method is proposed for the estimation of the average treatment effect of social polic...
Recursive partitioning methods have become popular and widely used tools for nonparametric regressio...
Data matching is a typical statistical problem in non experimental and/or observational studies or, ...
Includes bibliographical references (pages 74-76)In observational studies, in order to derive unbias...
Binary recursive partitioning (BRP) is a computationally-intensive statistical method that can be us...
Replication Package for: Estimation based on nearest neighbor matching: from density ratio to averag...
Traditionally, multiple linear regression has been widely used in the field of organizational scienc...
We compare propensity-score matching methods with covariate matching estimators. We first discuss th...
Matching estimators for average treatment effects are widely used in evaluation research despite the...
Researchers who generate data often optimize efficiency and robustness by choosing stratified over s...
In this paper we introduce the Random Recursive Partitioning (RRP) matching method. RRP generates a ...
In this paper we introduce the Random Recursive Partitioning (RRP) matching method. RRP generates a ...
Applications of the random recursive partitioning (RRP) method are described. This method generates ...
Applications of the random recursive partitioning (RRP) method are described. This method generates ...
A new matching method is proposed for the estimation of the average treatment effect of social polic...
Recursive partitioning methods have become popular and widely used tools for nonparametric regressio...
Data matching is a typical statistical problem in non experimental and/or observational studies or, ...
Includes bibliographical references (pages 74-76)In observational studies, in order to derive unbias...
Binary recursive partitioning (BRP) is a computationally-intensive statistical method that can be us...
Replication Package for: Estimation based on nearest neighbor matching: from density ratio to averag...
Traditionally, multiple linear regression has been widely used in the field of organizational scienc...
We compare propensity-score matching methods with covariate matching estimators. We first discuss th...
Matching estimators for average treatment effects are widely used in evaluation research despite the...
Researchers who generate data often optimize efficiency and robustness by choosing stratified over s...