Difference between revisions of "Back Checks"

Jump to: navigation, search
(30 intermediate revisions by 3 users not shown)
Line 1: Line 1:
<onlyinclude>
'''Back checks''' are an important tool that allows the [[Impact Evaluation Team|research team]] to verify the [[Monitoring Data Quality | quality]] and validity of [[Primary Data Collection | survey data]]. Throughout the duration of the [[Field Surveys|fieldwork]], a '''back check team''' returns to a randomly-selected sub-sample of households who have already been interviewed by enumerators. The back check team re-interviews these respondents, using a much smaller set of questions from the actual [[Questionnaire Design|survey instrument]] (or questionnaire). This is known as a '''back check survey''', and allows the '''research team''' to modify certain aspects of the '''data collection''' to [[Data Quality Assurance Plan|improve data quality]].
Back checks are quality control method used to verify data collected during a survey. After survey data has been collected, a randomly-selected subset of households are re-interviewed with a very short questionnaire to verify and determine the legitimacy of key data collected in the actual survey.  
</onlyinclude>
==Read First ==
==Read First ==
Back checks are an important tool to detect fraud, i.e. enumerators sitting under a tree and filling out questionnaires themselves, and to assess the accuracy of the data collected. Back checks can be conducted by in-person visits or phone calls. A complementary approach to in-person back checks is to do [[Random Audio Audits]].
* '''Back checks''' are an important tool to detect fraud, for instance, enumerators filling out questionnaires themselves.
* '''Back checks''' help researchers to assess the accuracy of [[Primary Data Collection|data collection]], and [[Monitoring Data Quality|monitor data quality]].
* '''Back checks''' can be conducted by in-person visits, or through phone calls. A complementary approach to in-person back checks is conducting [[Random Audio Audits|random audio audits]].
* '''Back checks''' allow the [[Impact Evaluation Team|research team]] to resolve issues in data collection by improving [[Enumerator Training | enumerator training ]], or replacing low-performing or problematic enumerators.


==Best Practices during back checks ==  
==Logistics==
Here are some of the best practices for back checks:
* '''Duration.''' The total duration of each '''back check survey''' should be around 10-15 minutes.
* Aim to back check at least 10% of the total observations
* '''Specialized enumerators.''' Hire a team of experienced and skilled enumerators to conduct the back checks.
* Back checks should also be front-heavy i.e. majority of them occurring in the first few days / weeks of data collection. This helps find whether the questionnaire/enumerators are doing their jobs well and can be remedied through training/replacement. 
* '''Independent team.''' The '''back check team''' should be independent from the rest of the [[Preparing_for_Field_Data_Collection#Team_setup_and_roles|survey staff]]. Train them separately, and ensure that there is very little or no contact between the back check team and the '''survey team'''.
*The back check sample should be stratified across survey teams/surveyors.
* '''20%-First 2 Weeks rule.''' Administer 20% of back checks within the first two weeks of [[Preparing for Field Data Collection|fieldwork]]. This helps the [[Impact Evaluation Team|research team]] to identify quickly whether the [[Questionnaire Design | questionnaire]] is effective, whether enumerators are doing their jobs well, and what changes to make to ensure [[Data Quality Assurance Plan|high quality data collection]].
* The back checks should be done in person by an independent third party.
* It is important that enumerators do not know what questions will be audited. to that end, many people randomly select a small number of questions from the survey instrument to back check, and change the back check form regularly during data collection.


==How to Select Back Check Questions ==
==Sampling==
Back check questions should be selected with the performance of both the questionnaire and the surveyor in mind. Using different types of questions during the back check helps in finding the cause of poor data quality, i.e. questionnaire language, surveyor performance, survey fraud, etc. Some of the questions that should be asked during a back check are as follows:
The following points are important when selecting the sample for the '''back check survey''':
* '''Sample size.''' Aim to '''back check''' 10-20% of the total observations.
* '''Stratified sampling.''' The back check sample should be [[Stratified Random Sample | stratified]], that is it must cover all [[Preparing_for_Field_Data_Collection#Team_setup_and_roles|survey teams]] and enumerators. Back check every team, and every enumerator regularly, and as frequently as possible.
* '''Include missing respondents.''' This is to verify that there is no bias in the sample just because enumerators did not track hard-to-find respondents.
* '''Include other flagged observations.''' Include observations that were flagged in other quality tests like [[High Frequency Checks | high frequency checks]]. Also include respondents who were interviewed by enumerators suspected of cheating.


* To test for translation issues, back check questions which can be interpreted differently by different surveyors. *
==Designing the Back Check Survey==
* To test whether enumerators are falsifying data to shorten interviews, back check questions that determine repeated sections of the questionnaire. For example, if there is a long series of questions about household members, verify the correct number of household members. If an agricultural survey asks for production information by plot, verify the number of plots.
Questions for the '''back check survey''' (or simply '''back check''') are drawn from the actual [[Questionnaire Design | questionnaire]] which is used for [[Primary Data Collection|data collection]]. There are four types of questions that should be included in a '''back check''' to get a clear idea of the [[Monitoring Data Quality|data quality]], as well as the enumerator's skills:
* To test for fraud, check simply that an enumerator visited the household and conducted an interview with the correct respondent


==A framework for back checks from Innovations for Poverty Action==
* '''Questions to verify respondent and interview information:''' Verify the identity of the respondent and check if, when, and where the original survey took place. Useful for verifying reported completion rates.  
The following framework for back checks has been developed by [http://www.poverty-action.org/ Innovation for Poverty Action].


;Identifying Respondents and Interview Information
* '''Questions to detect fraud:''' Questions that ask for straightforward information which has no expected variation or room for error. They do not require particularly skilled enumerators, and do not vary over time - especially the time period between the actual interview and the '''back check'''. For example, questions about type of dwelling, education level, marital status, occupation etc. The actual questions in this category will depend on the survey instrument and context. If the answers to these questions differ between the actual survey and the backcheck survey, it is a sign of either poor [[Data Quality Assurance Plan|data quality]], a serious enumerator problem, and/or potential wrongdoing by the enumerator.
:- Check if we have the right person
:- Check if they interview took place and when did it take place.  


;Type 1 Variables
* '''Questions to detect errors in survey execution:''' Questions that have complex '''loops''' or '''skip patterns''', or check for consistency of recorded answers. For example, if household size is recorded as 4, then the number of repeat groups for household members should not be more than 4. Capable enumerators should get the true answer for these questions. If values for these questions differ between the questionnaire and the backcheck survey, then the enumerator may need more [[Enumerator Training|training]].
:- Straightforward questions where we expect no variation.
:- For example - education level, marital status, occupation, has children or not, etc.


;Type 2 Variables 
* '''Questions to detect problems with the questionnaire or key outcomes:''' Provide additional checks for accuracy, and flag difficulties and/or inconsistencies in the interpretation of the questions by enumerators. If these values differ between the actual survey and the back check, then the enumerator may need more traning. In some cases, the survey instrument may need to be simplified.
:- Questions where we expect capable enumerators to get the true answer.


;Type 3 Variables
* '''Questions that repeat multiple times:''' Check whether enumerators are falsifying data to reduce the length of interviews. For example, if there is a long series of questions about each household member, verify that the number of times these questions repeat is equal to the number of household members.  
:- Questions that we expect to be difficult. We back check these questions to understand if they were correctly interpreted in the field.  


The total duration of the back checks should be around 10-15 minutes.
'''Note''' that it is important that enumerators do not know what questions will be included in the '''back check survey'''. To do so, you may consider randomizing questions, or changing the back check survey regularly during data collection.


=== Comparing Back Checks to Actual Survey Data ===
== bcstats ==
After completing a back check, you can now compare the data obtained from the back check to your actual survey data. This can be done by using the Stata command <code> bcstats </code> developed by [http://www.poverty-action.org/ '''Innovations for Poverty Action.'''] This command compares the back check data and the survey data, and produces a data set of the comparisons between the two data sets. The command also completes enumerator checks and stability checks for variables.
After completing a back check, you can compare the '''back check data''' with the original survey data. You can do this using the Stata command <code>bcstats</code>, developed by [http://www.poverty-action.org/ Innovations for Poverty Action]. This command produces a dataset that lists the comparisons between the back check and original survey data. The command also allows [[Impact Evaluation Team|research teams]] to perform [[High_Frequency_Checks#Enumerators_Checks|enumerator checks]] and [[Back Checks#Stability|stability checks]] for variables.


The steps are as follows:
The following syntax is used for performing '''back checks''' using <code>bcstats</code>:


<code>  
<syntaxhighlight lang="Stata" line>ssc install bcstats  
ssc install bcstats </br>
bcstats, //
bcstats, surveydata(''filename'') bcdata(''filename'') id(''varlist'') [options]
  surveydata(filename) bcdata(filename) id(varlist)//
</code>.
  [options]
</syntaxhighlight>


To learn about the options for bcstats and survey back checks, please type <code> help bcstats </code> on Stata after installing the command.
To learn in more detail about the options for <code>bcstats</code> and '''back checks''', please type <syntaxhighlight lang="Stata" inline>help bcstats</syntaxhighlight> on Stata after installing the command. Listed below are two options that are used most commonly with <code>bcstats</code>.


== Back to Parent ==
=== Comparing different variable types ===
As part of the functionalities under '''[''options'']''', <code>bcstats</code> allows users to compare 3 different types of variables.
 
* <code>t1vars()</code>''':''' Specifies the list of '''type 1 variables'''. These are variables that are expected to stay constant between the survey data and the back check. In case there are differences for these variables, the '''research team''' may take action against the enumerator. This option displays variables which have high error rates, and variables with completed the [[High_Frequency_Checks#Enumerators_Checks|enumerator checks]]. 
 
* <code>t2vars()</code>''':''' Specifies the list of '''type 2 variables'''. These are variables that may be difficult for enumerators to work with.  For instance, they may involve complicated [https://www.surveycto.com/best-practices/using-relevance/ skip patterns] or complex logic.  In this case, if there are differences between the survey data and the back check, it may indicate the need for further [[Enumerator Training|training]], but will not result in action against the enumerator. This option displays the error rates for these variables, and variables with completed '''enumerator checks''' and '''stability checks'''. 
 
* <code>t3vars()</code>''':''' Specifies the list of '''type 3 variables'''.  These are variables whose '''stability''' between the survey and back check is of interest to the research team. If there are any differences for these variables between the survey data and back check data, it will not result in action against the enumerator.  This option displays the error rates of all variables, and variables with completed stability checks.
 
=== Stability ===
<code>bcstats</code> also allows users to test for '''stability''' by running a paired '''t-test''' to compare the sample means for the survey data and the back check data. It also allows users to specify the confidence level for the t-test using the <code>level()</code> option. By default, it considers a 95% confidence level.
 
==Back to Parent==
This article is part of the topic [[Field Management]].
This article is part of the topic [[Field Management]].


== Additional Resources ==
== Additional Resources ==
* World Health Organization's  [http://unstats.un.org/unsd/hhsurveys/pdf/Chapter_10.pdf '''Quality Assurance in Surveys: standards, guidelines, and procedures''']. This chapter provides, in detail,  the approach and methodology on quality control during surveys.
*DIME Analytics’ [https://github.com/worldbank/DIME-Resources/blob/master/stata1-4-quality.pdf Real Time Data Quality Checks]
 
*DIME Analytics’ [https://github.com/worldbank/DIME-Resources/blob/master/stata2-4-quality.pdf Data Quality Assurance]
* World Health Organization's  [http://unstats.un.org/unsd/hhsurveys/pdf/Chapter_10.pdf Quality Assurance in Surveys: standards, guidelines, and procedures]. This chapter provides, in detail,  the approach and methodology on quality control during surveys.
*[https://ideas.repec.org/c/boc/bocode/s458173.html bcstats], a  Stata program written by an IPA staff member for conducting back checks on survey data.
[[Category: Research Design]]
[[Category: Field Management ]]
[[Category: Field Management ]]

Revision as of 14:53, 13 April 2021

Back checks are an important tool that allows the research team to verify the quality and validity of survey data. Throughout the duration of the fieldwork, a back check team returns to a randomly-selected sub-sample of households who have already been interviewed by enumerators. The back check team re-interviews these respondents, using a much smaller set of questions from the actual survey instrument (or questionnaire). This is known as a back check survey, and allows the research team to modify certain aspects of the data collection to improve data quality.

Read First

  • Back checks are an important tool to detect fraud, for instance, enumerators filling out questionnaires themselves.
  • Back checks help researchers to assess the accuracy of data collection, and monitor data quality.
  • Back checks can be conducted by in-person visits, or through phone calls. A complementary approach to in-person back checks is conducting random audio audits.
  • Back checks allow the research team to resolve issues in data collection by improving enumerator training , or replacing low-performing or problematic enumerators.

Logistics

  • Duration. The total duration of each back check survey should be around 10-15 minutes.
  • Specialized enumerators. Hire a team of experienced and skilled enumerators to conduct the back checks.
  • Independent team. The back check team should be independent from the rest of the survey staff. Train them separately, and ensure that there is very little or no contact between the back check team and the survey team.
  • 20%-First 2 Weeks rule. Administer 20% of back checks within the first two weeks of fieldwork. This helps the research team to identify quickly whether the questionnaire is effective, whether enumerators are doing their jobs well, and what changes to make to ensure high quality data collection.

Sampling

The following points are important when selecting the sample for the back check survey:

  • Sample size. Aim to back check 10-20% of the total observations.
  • Stratified sampling. The back check sample should be stratified, that is it must cover all survey teams and enumerators. Back check every team, and every enumerator regularly, and as frequently as possible.
  • Include missing respondents. This is to verify that there is no bias in the sample just because enumerators did not track hard-to-find respondents.
  • Include other flagged observations. Include observations that were flagged in other quality tests like high frequency checks. Also include respondents who were interviewed by enumerators suspected of cheating.

Designing the Back Check Survey

Questions for the back check survey (or simply back check) are drawn from the actual questionnaire which is used for data collection. There are four types of questions that should be included in a back check to get a clear idea of the data quality, as well as the enumerator's skills:

  • Questions to verify respondent and interview information: Verify the identity of the respondent and check if, when, and where the original survey took place. Useful for verifying reported completion rates.
  • Questions to detect fraud: Questions that ask for straightforward information which has no expected variation or room for error. They do not require particularly skilled enumerators, and do not vary over time - especially the time period between the actual interview and the back check. For example, questions about type of dwelling, education level, marital status, occupation etc. The actual questions in this category will depend on the survey instrument and context. If the answers to these questions differ between the actual survey and the backcheck survey, it is a sign of either poor data quality, a serious enumerator problem, and/or potential wrongdoing by the enumerator.
  • Questions to detect errors in survey execution: Questions that have complex loops or skip patterns, or check for consistency of recorded answers. For example, if household size is recorded as 4, then the number of repeat groups for household members should not be more than 4. Capable enumerators should get the true answer for these questions. If values for these questions differ between the questionnaire and the backcheck survey, then the enumerator may need more training.
  • Questions to detect problems with the questionnaire or key outcomes: Provide additional checks for accuracy, and flag difficulties and/or inconsistencies in the interpretation of the questions by enumerators. If these values differ between the actual survey and the back check, then the enumerator may need more traning. In some cases, the survey instrument may need to be simplified.
  • Questions that repeat multiple times: Check whether enumerators are falsifying data to reduce the length of interviews. For example, if there is a long series of questions about each household member, verify that the number of times these questions repeat is equal to the number of household members.

Note that it is important that enumerators do not know what questions will be included in the back check survey. To do so, you may consider randomizing questions, or changing the back check survey regularly during data collection.

bcstats

After completing a back check, you can compare the back check data with the original survey data. You can do this using the Stata command bcstats, developed by Innovations for Poverty Action. This command produces a dataset that lists the comparisons between the back check and original survey data. The command also allows research teams to perform enumerator checks and stability checks for variables.

The following syntax is used for performing back checks using bcstats:

ssc install bcstats 
bcstats, //
  surveydata(filename) bcdata(filename) id(varlist)//
  [options]

To learn in more detail about the options for bcstats and back checks, please type help bcstats on Stata after installing the command. Listed below are two options that are used most commonly with bcstats.

Comparing different variable types

As part of the functionalities under [options], bcstats allows users to compare 3 different types of variables.

  • t1vars(): Specifies the list of type 1 variables. These are variables that are expected to stay constant between the survey data and the back check. In case there are differences for these variables, the research team may take action against the enumerator. This option displays variables which have high error rates, and variables with completed the enumerator checks.
  • t2vars(): Specifies the list of type 2 variables. These are variables that may be difficult for enumerators to work with. For instance, they may involve complicated skip patterns or complex logic. In this case, if there are differences between the survey data and the back check, it may indicate the need for further training, but will not result in action against the enumerator. This option displays the error rates for these variables, and variables with completed enumerator checks and stability checks.
  • t3vars(): Specifies the list of type 3 variables. These are variables whose stability between the survey and back check is of interest to the research team. If there are any differences for these variables between the survey data and back check data, it will not result in action against the enumerator. This option displays the error rates of all variables, and variables with completed stability checks.

Stability

bcstats also allows users to test for stability by running a paired t-test to compare the sample means for the survey data and the back check data. It also allows users to specify the confidence level for the t-test using the level() option. By default, it considers a 95% confidence level.

Back to Parent

This article is part of the topic Field Management.

Additional Resources