Difference between revisions of "Iefieldkit"

Jump to: navigation, search
Line 1: Line 1:
[[Primary Data Collection|Primary data collection]] and [[Data Cleaning|cleaning]] involve highly repetitive but extremely important processes that contribute to high quality [[Reproducible Research|reproducible research]]. [https://www.worldbank.org/en/research/dime/data-and-analytics DIME Analytics] has developed <code>iefieldkit</code> as a package in [https://www.stata.com/ Stata] to standardize and simplify '''best practices''' involved in '''primary data collection'''. <code>iefieldkit</code> consists of commands that automate: [[Ietestform|error-checking]] for electronic '''Open Data Kit (ODK)-based''' survey modules; [[Ieduplicates|duplicate checking]] and [[Iecompdup|resolution]]; [[Iecodebook#Apply|data cleaning]] and [[Iecodebook#Append and Harmonize|survey harmonization]]; and [[Iecodebook#Export|codebook creation]].
[[Primary Data Collection|Primary data collection]] and [[Data Cleaning|cleaning]] involve highly repetitive but extremely important processes that contribute to high quality [[Reproducible Research|reproducible research]]. [https://www.worldbank.org/en/research/dime/data-and-analytics DIME Analytics] has developed <code>iefieldkit</code> as a package in [https://www.stata.com/ Stata] to standardize and simplify '''best practices''' involved in '''primary data collection'''. <code>iefieldkit</code> consists of commands that automate: [[Ietestform|error-checking]] for electronic '''Open Data Kit (ODK)-based''' survey modules; [[Ieduplicates|duplicate checking]] and [[Iecompdup|resolution]]; [[Iecodebook#Apply|data cleaning]] and [[Iecodebook#Append and Harmonize|survey harmonization]]; and [[Iecodebook#Export|codebook creation]].
==Read First==
==Read First==
* [https://www.worldbank.org/en/research/dime/data-and-analytics DIME Analytics] [https://osf.io/csmxz/ Bootcamp on Reproducible 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.
* [[Stata Coding Practices|Stata coding practices]].
* [[Stata Coding Practices|Stata coding practices]] lists common best practices for writing reproducible and replicable Stata '''do-files'''.
* <code>iefieldkit</code> currently consists of four commands: <code>[[ietestform]]</code>, <code>[[ieduplicates]]</code>, <code>[[iecompdup]]</code>, and <code>[[iecodebook]]</code>.
* <code>iefieldkit</code> currently consists of four commands: <code>[[ietestform]]</code>, <code>[[ieduplicates]]</code>, <code>[[iecompdup]]</code>, and <code>[[iecodebook]]</code>.
* Each of these commands can be used independently in a wide range contexts.  
* Each of these commands can be used independently in a wide range contexts.  

Revision as of 19:30, 17 July 2020

Primary data collection and cleaning involve highly repetitive but extremely important processes that contribute to high quality reproducible research. DIME Analytics has developed iefieldkit as a package in Stata to standardize and simplify best practices involved in primary data collection. iefieldkit consists of commands that automate: error-checking for electronic Open Data Kit (ODK)-based survey modules; duplicate checking and resolution; data cleaning and survey harmonization; and codebook creation.

Read First

Objective

One of the most important developments in economics over the past two decades has been the rise of empirical research, through primary as well as secondary data collection. The authors of iefieldkit have developed the package to support data collection by researchers directly in a wide range of fields like agriculture, health, energy and environment, transport, financial and private sector development, gender, governance, and fragility, conflict and violence (FCV). iefieldkit therefore supports general best practices in primary data collection from start to finish:

These four commands in this package make sure that inputs and outputs are significantly more human-readable by working with spreadsheets instead of Stata do-files. In doing so, they allow field personnel who do not specialize in code tools to understand and review the tasks involved in primary data collection. iefieldkit thus recognizes the vital role played by field personnel in supporting data management and data cleaning even if they are not proficient in Stata.

Before Data Collection

In Open Data Kit (ODK)-based electronic survey kits, including SurveyCTO, survey forms (or questionnaires) are typically built in Excel using a specialized structured syntax. Before the research team starts with field data collection, they can use ietestform to test Open Data Kit (ODK)-based electronic survey forms for common errors, as well as best practices for SurveyCTO-based forms.

Most ODK servers, including SurveyCTO servers, have a built-in test feature that tests the ODK syntax of a form when it is uploaded by the research team. ietestform complements these built-in tests to ensure that the collected data is in a format that is easily readable in Stata, and warns users who use practices we have learnt are prone to data quality errors.

During Data Collection

While data collection is ongoing, ieduplicates and iecompdup allow researchers to test for, and resolve duplicate entries in the dataset. The commands combine four key tasks to deal with duplicate ID values:

  • Identifying duplicate entries.
  • Comparing observations with the same ID value.
  • Tracking and documenting any changes made to the identifying variable.
  • Applying the necessary corrections to the data.

Together these commands ensure that the collected data will be a correct record of the sample, and can be merged with the master database. Both these commands were previously part of the ietoolkit package, but have now been moved to iefieldkit.

After Data Collection

After data collection is complete, iecodebook allows the research team to automate the repetitive tasks involved in cleaning data before it can be analyzed. As the name suggests, the iecodebook command is structured around Excel-based codebooks, which allows researchers to perform and document data cleaning tasks in Excel itself, instead of do-files. Therefore, codebooks allow researchers to document the cleaned data in a format that is both human and machine-readable. iecodebook implements this through 4 subcommands:

  • iecodebook apply applies rename, recode, and/or label commands to a large number of variables in the dataset.
  • iecodebook append harmonizes two or more datasets, and appends them. That is, it allows two or more datasets to have the same variable names, labels, and value labels.
  • iecodebook export creates an Excel codebook that describes the current dataset. It can also produce an exportable version of the dataset which only contains the variables used in a particular do-file.
  • iecodebook template creates an Excel template that describes the current or targeted dataset(s), and prepares the codebook for the other subcommands in iecodebook .

Related Pages

Click here to see pages that link to this topic.
This page is part of the topic Stata coding practices.

Additional Resources