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'''iematch''' is used to match observations in one group to observations in another group based on a single variable. This single variable could be a p-score but could be any continuous variable.
<code>iematch</code> is a Stata command that matches base observations to target observations on a single continuous variable. Matching allows researchers to find non-treated units with similar characteristics as treated units, laying the groundwork for causal inference. Matching with <code>iematch</code> takes place before [[Data Analysis | analysis]]. This page describes the use, options and validity of <code>iematch</code>.


This article is means to describe use cases, work flow and the reasoning used when developing the commands. For instructions on how to use the command specifically in Stata and for a complete list of the options available, see the help files by typing <code>help iematch</code> in Stata. This command is a part of the package [[Stata_Coding_Practices#ietoolkit|ietoolkit]], to install all the commands in this package including this command, type <code>ssc install ietoolkit</code> in Stata.
==Read First==
*This command is part of the package <code>[[Stata Coding Practices#ietoolkit | ietoolkit]]</code>. To install all commands in this package, including <code>iematch</code>, type <code>ssc install ietoolkit</code> in Stata.
*For detailed instructions on how to implement the command in Stata, type <code>help iematch</code> in Stata.
*While <code>iematch</code> matches observations, it does not test for validity.


== Intended use cases ==
==Overview==


'''Important Disclaimer:''' There is no test in iematch that confirms the validity of a match from an economic theory aspect. This command only performs the computational task of matching one set of observations to observations in another set. You must perform the tests that you find appropriate to your case. Our understanding is that there is no consensus on a general test for this, but if you have suggestions for tests that we should implement and return statistics on, please let us know. Contact information on our [https://github.com/worldbank/ietoolkit GitHub page]
<code>iematch</code> uses baseline data to match base to target observations. Researchers may use this command if, for example, a control group was not selected at the time of random treatment assignment. In certain cases, <code>iematch</code> may also be used for [[Propensity_Score_Matching|propensity score matching (PSM)]], the most commonly used matching method. Several user written commands are developed specifically for propensity score matching and perform all steps required. In most cases, these commands are optimal for PSM analysis. Sometimes, though, PSM analysis may require a special step that no off-the-shelf PSM commands offer. In these cases, the user must set up each step of the PSM analysis him/herself and may choose to use <code>iematch</code> to perform the matching step.


A very common use case for matching in impact evaluations is [[Propensity_Score_Matching|propensity score matching (PSM)]]. There are several user written commands developed specifically for propensity score matching that includes all steps required and in most cases you want to use one of those commands for PSM analysis. However, sometimes your PSM analysis might require a special step that none of the off-the-shelf PSM commands offer, and you will have to set up each step of the PSM analysis yourself. In such a case iematch can do the matching step for you.
Note that while <code>iematch</code> performs the computational task of matching two sets of observations based on differences in the matching variable, the command does not incorporate a test to confirm the validity of a match from an economic theory standpoint. It is up to the user to perform the tests on the <code>iematch</code> results that he/she finds most appropriate. To DIME Analytics’ knowledge, there is no consensus on a general test for matching validity. However, if you have suggestions for tests to integrate into the command, please [mailto:dimeanalytics@worldbank.org contact DIME Analytics].


iematch can also be used to sample controls to treatment observations using baseline data. This is sometimes done when the controls to the treatment observation was not selected at the time of random treatment assignment and needs to be identified in a larger population. There are many factors that can make this type of pairing invalid despite the matching result provided by iematch being mathematically correct. You always need to use econometrical reasoning for the validity of this technique in your case given the data you have available.
== Implementation ==
<code>iematch</code> does not identify globally optimal matching results, but rather uses greedy matching. In optimal matching, the sum of all absolute differences between matched pairs is minimized using optimization. In greedy matching, the sum of differences is disregarded: the process instead begins by matching the best pair, then the second best pair and so on until all valid pairs are found. An optimal match might split up a very good match and a decent match to create two medium good matches. Optimal matches are much more complex and require more computational power. Often, the results of optimal matching are only marginally better and do not seem to affect overall balance (see Gu and Rosenbaum 1993).


== Instructions ==
===Basic Implementation===
These instructions are meant to help you understand how to use the command. For technical instructions on how to implement the command in Stata see the help files by typing <code>help  iematch</code> in Stata.
A basic implementation of the command follows:


''Describe best practices related to this command here.''
<nowiki>iematch, grpdummy(tmt) matchvar(p_hat)</nowiki>


== Reasoning used during development ==
In this example, the observations with tmt=1 will be matched towards the nearest, in terms of p_hat, observations with tmt=0.
iematch does not identify globally optimal matching results as it uses greedy matching. In optimal matching the sum of all absolute differences between matched pairs is minimized using optimization. In greedy matching the sum of differences is not regarded, the matching starts by matching the best pair, then the second best pair etc. until all valid pairs are found. An optimal match might split up a very good match and a decent match to create two medium good matches. Optimal matches are much more complex and require more computational power, and it often the results are only marginally better and does not seem to make a difference to overall balance ().
 
=== One-to-One vs. Many-to-One ===
<code>iematch</code> performs either a one-to-one match or a many-to-one match between base and target observations. The required option <code>grpdummy()</code> indicates the base and target observations: a <code>grpdummy()</code> value of 1 indicates a base observation and a <code>grpdummy()</code> value of 0 indicates target observation. A missing <code>grpdummy()</code> value excludes the observation from the matching.
 
A one-to-one match produces matched pairs of exactly one target observation and exactly one base observation. In a one-to-one match, the data must include more target observations than base observations. If there are more base observations, simply switch which group has value 1 and which has value 0 in the group dummy.
 
A many-to-one match produces matched groups with exactly one target observation and one or more base observations. In a many-to-one match, the data must include more base observations than target observations. If there are more target observations, simply switch which group has value 1 and which has value 0 in the group dummy.
 
To restrict the number of base observations allowed to match with a single target observation, use the option <code>maxmatch()</code>.
 
=== Maximum Difference in a Match ===
To improve the validity of a matched result, consider allowing matches where the difference between the matched observation is no more than a value specified in <code>maxdiff()</code>. You could of course drop those values manually after running iematch, but using <code>maxdiff()</code> often helps the algorithm to finish faster if you have very large data sets.
 
==Ensuring Replicability ==
 
If all values in the variable used for the matching are unique, then the results will always be the same no matter sort order of the data set as long as the values does not change. Thus, for datasets with entirely unique matching values, the results of <code>iematch</code> will always be replicable. However, if there are duplicates values in the matching variable, the user must take the following two steps to ensure that the results are replicable:
# Set a seed (line 1)
# Use the option <code>seedok</code> with <code>iematch</code> (line 2)
 
<nowiki>
Set seed 12345
iematch, grpdummy(tmt) matchvar(p_hat) seedok</nowiki>
 
Setting a seed ensures that <code>iematch</code> will generate the same matching result each time -- even if some observations have duplicate values. Specifying <code>seedok</code> suppresses the error message thrown when there are duplicates in <code>matchvar</code>.


== Back to Parent ==
== Back to Parent ==
This article is part of the topic [[Stata_Coding_Practices#ietoolkit|ietoolkit]]
This article is part of the topic [[Stata_Coding_Practices#ietoolkit|ietoolkit]]
== Additional Resources ==
*Read more about <code>ietoolkit</code> [https://github.com/worldbank/ietoolkit here] on GitHub.


[[Category: Stata ]]
[[Category: Stata ]]
=== References ===
* Gu S, Rosenbaum PR. Comparison of multivariate matching methods: structure, distances, and algorithms. J Comput Graph Stat 1993;2:405–20.

Latest revision as of 15:55, 10 June 2019

iematch is a Stata command that matches base observations to target observations on a single continuous variable. Matching allows researchers to find non-treated units with similar characteristics as treated units, laying the groundwork for causal inference. Matching with iematch takes place before analysis. This page describes the use, options and validity of iematch.

Read First

  • This command is part of the package ietoolkit. To install all commands in this package, including iematch, type ssc install ietoolkit in Stata.
  • For detailed instructions on how to implement the command in Stata, type help iematch in Stata.
  • While iematch matches observations, it does not test for validity.

Overview

iematch uses baseline data to match base to target observations. Researchers may use this command if, for example, a control group was not selected at the time of random treatment assignment. In certain cases, iematch may also be used for propensity score matching (PSM), the most commonly used matching method. Several user written commands are developed specifically for propensity score matching and perform all steps required. In most cases, these commands are optimal for PSM analysis. Sometimes, though, PSM analysis may require a special step that no off-the-shelf PSM commands offer. In these cases, the user must set up each step of the PSM analysis him/herself and may choose to use iematch to perform the matching step.

Note that while iematch performs the computational task of matching two sets of observations based on differences in the matching variable, the command does not incorporate a test to confirm the validity of a match from an economic theory standpoint. It is up to the user to perform the tests on the iematch results that he/she finds most appropriate. To DIME Analytics’ knowledge, there is no consensus on a general test for matching validity. However, if you have suggestions for tests to integrate into the command, please contact DIME Analytics.

Implementation

iematch does not identify globally optimal matching results, but rather uses greedy matching. In optimal matching, the sum of all absolute differences between matched pairs is minimized using optimization. In greedy matching, the sum of differences is disregarded: the process instead begins by matching the best pair, then the second best pair and so on until all valid pairs are found. An optimal match might split up a very good match and a decent match to create two medium good matches. Optimal matches are much more complex and require more computational power. Often, the results of optimal matching are only marginally better and do not seem to affect overall balance (see Gu and Rosenbaum 1993).

Basic Implementation

A basic implementation of the command follows:

iematch, grpdummy(tmt) matchvar(p_hat)

In this example, the observations with tmt=1 will be matched towards the nearest, in terms of p_hat, observations with tmt=0.

One-to-One vs. Many-to-One

iematch performs either a one-to-one match or a many-to-one match between base and target observations. The required option grpdummy() indicates the base and target observations: a grpdummy() value of 1 indicates a base observation and a grpdummy() value of 0 indicates target observation. A missing grpdummy() value excludes the observation from the matching.

A one-to-one match produces matched pairs of exactly one target observation and exactly one base observation. In a one-to-one match, the data must include more target observations than base observations. If there are more base observations, simply switch which group has value 1 and which has value 0 in the group dummy.

A many-to-one match produces matched groups with exactly one target observation and one or more base observations. In a many-to-one match, the data must include more base observations than target observations. If there are more target observations, simply switch which group has value 1 and which has value 0 in the group dummy.

To restrict the number of base observations allowed to match with a single target observation, use the option maxmatch().

Maximum Difference in a Match

To improve the validity of a matched result, consider allowing matches where the difference between the matched observation is no more than a value specified in maxdiff(). You could of course drop those values manually after running iematch, but using maxdiff() often helps the algorithm to finish faster if you have very large data sets.

Ensuring Replicability

If all values in the variable used for the matching are unique, then the results will always be the same no matter sort order of the data set as long as the values does not change. Thus, for datasets with entirely unique matching values, the results of iematch will always be replicable. However, if there are duplicates values in the matching variable, the user must take the following two steps to ensure that the results are replicable:

  1. Set a seed (line 1)
  2. Use the option seedok with iematch (line 2)
Set seed 12345
iematch, grpdummy(tmt) matchvar(p_hat) seedok

Setting a seed ensures that iematch will generate the same matching result each time -- even if some observations have duplicate values. Specifying seedok suppresses the error message thrown when there are duplicates in matchvar.

Back to Parent

This article is part of the topic ietoolkit

Additional Resources

  • Read more about ietoolkit here on GitHub.