Difference between revisions of "Ietoolkit"

Jump to: navigation, search
Line 1: Line 1:
[https://www.worldbank.org/en/research/dime/data-and-analytics DIME Analytics] has developed the <code>ietoolkit</code> package for Stata to simplify the process of [[Data Management|data management]] and [[Data Analysis|analysis]] in impact evaluations. Along with <code>iefieldkit</code>, this package allows [[Impact Evaluation Team|research teams]] to perform highly repetitive but important processes in [[Primary Data Collection|Primary data collection]] that contribute to high quality [[Reproducible Research|reproducible research]].  
[https://www.worldbank.org/en/research/dime/data-and-analytics DIME Analytics] has developed the <code>ietoolkit</code> package for Stata to simplify the process of [[Data Management|data management]] and [[Data Analysis|analysis]] in impact evaluations. Along with <code>iefieldkit</code>, this package allows [[Impact Evaluation Team|research teams]] to perform highly repetitive but important processes in [[Primary Data Collection|primary data collection]], with an aim to promote high quality [[Reproducible Research|reproducible research]].  
==Read First==
==Read First==
* [https://www.worldbank.org/en/research/dime/data-and-analytics DIME Analytics] has conducted a [https://osf.io/csmxz/ bootcamp on reproducible research] which establishes standard best practices in development research.
* [https://www.worldbank.org/en/research/dime/data-and-analytics DIME Analytics] has conducted a [https://osf.io/csmxz/ bootcamp on reproducible research] which establishes standard best practices in development research.

Revision as of 15:47, 16 February 2021

DIME Analytics has developed the ietoolkit package for Stata to simplify the process of data management and analysis in impact evaluations. Along with iefieldkit, this package allows research teams to perform highly repetitive but important processes in primary data collection, with an aim to promote high quality reproducible research.

Read First

Objective

Data Management

  • iefolder sets up a standardized (common) structure for all folders that are shared as part of a project, that is the project folder. It creates master do-files that link to all sub-folders (folders within another folder), so that the project folder is automatically updated every time more data or files are shared from the field teams. This command helps create reproducible research.
  • iegitaddmd allows members of the research team to share a template (outline) folder for a new project on GitHub even if it is empty. This command creates a placeholder that can be updated later when a file is added to that folder. For example, templates often include an output folder where the results of data analysis will be stored. This folder remains empty until the data set is cleaned to prepare it for analysis. Using this command, two people, say A and B, can still share this folder with each other on GitHub.
  • ieboilstart standardizes the version, capacity (in terms of the number of observations it can store in memory), and other Stata settings for all users in a project. This command should be run (typed) at the top of all do-files that are shared between members of the research team. Such a code is called a boilerplate code, since it standardizes the code at the beginning for all do-files.

An example of a code that uses these commands is given below:

 ieboilstart, version(14.0) //Standardizes the version for everyone.

 global folder "C:/Users/username/DropBox/ProjectABC" 

 iefolder new project, projectfolder("$folder") //Sets up the main structure
 
 iegitaddmd, folder ("$folder") //Makes sure users can share the main folder on 
 GitHub even if it is empty

Data Analysis

  • iematch is a command which can be used for matching observations in one group to observations in another group which are the closest in terms of a particular characteristic.
    For example, consider a study which is designed to evaluate the impact of randomly providing cash transfers to half the workers in a firm. The research team can use iematch to match and compare wages of women in the treatment group (which received the cash transfers) with observations in a control group (which did not receive the cash transfers).
  • iebaltab runs balance tests, and produces balance tables which show the difference in means for one or more treatment groups. It can be used to check if there are statistically significant differences between the treatment and control groups. In case there are significant differences in the means, iebaltab even displays an error message that suggests that results from such data can be wrongly interpreted.
  • iedropone drops only a specific number of observations, and makes sure that no additional observations are dropped.
  • ieboilsave performs checks to ensure that best practices are followed before saving a data set.
  • ieddtab runs difference-in-difference regressions and displays the result in well-formatted tables.
  • iegraph produces graphs of results from regression models that researchers commonly use during impact evaluations.

To install the ietoolkit, type ssc install ietoolkit in your Stata command window.

Related Pages

Additional Resources