Difference between revisions of "Randomization in SurveyCTO"

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=== Preload randomization without IDs ===
=== Preload randomization without IDs ===
It is still possible to preload randomized categories even if there is no way of knowing the respondents in the survey.
It is still possible to preload randomized categories even if there is no way of knowing the respondents in the survey. For example, you might only have a list of villages to survey and intend to do a lottery to decide which respondents to interview. Or you might have randomized school classes and you will interview all students in those classes but you do not know exactly how many students each class has. In both these cases we can not assign a randomized category to each respondent as we do not know who they are yet. Instead we will randomize a category to the first respondent in the village/class, randomize a category for the second respondent, etc. And in the field the enumerators have lists for each village/class where they cross off each ID being used.
 
The following list explains the steps needed for this. We will keep using the example where we new which school classes we wanted to interview but we do not know the size of those class. Let's say that we want to collect basic demographic information on all students, we want to do a short survey on 50% of the students and a long survey on 10% of the students.
 
* Create a data set with one observation per class if you do not already have that. Make sure that all classes have unique IDs.
* Expand the data set (code example below) with the maximum number of students you want to interview per class, or the maximum number of students there could be in a class if you always want to interview all students no matter how long they are. If you expect that the highest of number of students in a class is 50, expand the number of observations to 100 so that there is no risk your expectation was too low. We pick the number 99 so that no ID requires three digits.
* Create a unique ID for each student.
* Create
 
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There is a risk that the enumerators do not do this properly, but we can easily check that by looking into which IDs are used by each enumerators each day.
 
If you want to stratify over, for example, you can have two lists. One for male respondents and one with


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Revision as of 14:34, 14 December 2017

During surveys, you might often need to randomize various aspects of the questionnaire. While SurveyCTO has a random number generator, is is usually not recommended that you use it. This article will argue for doing the randomization in Stata, R or similar software, before the start of the survey, and preload the results of the randomization as dummies or categorical variables.

Why randomization is better to do before the Survey

During surveys, we often need to randomize various aspects of the questionnaire. For example – sometimes we need to randomize which household members to interview, and sometimes - which set of questions to ask. While most CAPI software have random number generators, it is not the preferred option. Using, for example, Stata to randomize and then preloading the generated data file into the survey software is in almost all cases the better option among the two. The main advantages of using Stata over CAPI software during randomization are as follows:

  • Randomization in Stata is transparent and reproducible which is important for publishing research.
  • Randomization results in Stata can be dependent, so that we are guaranteed that no disproportional large share of the results falls into any group. Randomization is always independent in SurveyCTO which means that no groups could be assigned observations if the number of observation per groups is low.
  • Randomization in Stata provides the option of ensuring that the result of the randomization is balanced over other variables, i.e. stratas. This means that we can guarantee that, for example, not all female respondents end up in a certain group.
  • Randomization in Stata is done before the survey takes place. This provides an opportunity to double check the result of a randomization and fix bugs and typos in the randomization code before it is used in the field, as it then would be too late to fix.

Practical guide to how to randomize in Stata for a survey

This is a basic example on how to do randomize in Stata and preload the results to SurveyCTO. See randomization in Stata more details for how to implement more advanced randomization, but the procedure for how to preload the result will still be the same as described below.

In the example below we have a survey in which we want a random 30% to answer to a long survey and the rest to take a shorter survey. We also have a gender variable and we want the ration of 30/70 to be as exact as possible within the both genders.

  • Let's say we a data set with all the respondents and replacement respondents, and that we have the variables, unique_id and gender. Make sure that all observations have uniquely and fully identifying ID in unique_id.
    • If you do not have ID for your respondents you should create it.
    • If you do not have a list of your respondents (for example, if you randomize the sample in the field by drawing lots) see the section of prelaoding randomization without IDs.
  • Set version, set seed and sort the data to guarantee a replicable sort. See replicable randomization in Stata why all these three variables are needed.
  • Generate a random number and create a dummy variable (long_survey in this example) that indicates for each observation if that observation should answer the long or the short survey.
    • Note that it does not have to be a dummy, we could just as well have had randomized into three groups and saved the result into a categorical variable with the value 1, 2, 3.
  • In the end we should have a data set with the unique_id and the categorical variables with the result of the randomization, in this example only long_survey.
  • In your SurveyCTO survey, have a question where the enumerator enters the ID for the respondent currently interviewed. For this to be possible the enumerators needs a list with both the name and the ID.
    • It is very important that these lists are not publicly disclosed as that would allow anyone to identify observations even in data sets that have names and other identifying information removed. If the data collected is extra sensitive, consider using a different ID than the main ID for this purpose.
  • Preload the data set you generated in Stata into your SurveyCTO survey using the ID entered by the enumerator.
  • Restrict the relevant section of the survey in SurveyCTO using the value just preloaded.

Example Stata code for the randomization used in the example above

*Set version 
ieboilstart , version(12.1)
`r(version)'

*Set seed
set seed 123456 //this is an example seed, replace this with another number

*Sort data set
sort unique_id

*Generate random number, rank that random number per gender, and assign 
* long survey if the rank is less than or equal the total number of observations 
* in that gender
gen rand = uniform()
bys gender : egen rank = rank(rand)
bys gender : gen long_survey = (rank/_N <= .3)

Preload randomization without IDs

It is still possible to preload randomized categories even if there is no way of knowing the respondents in the survey. For example, you might only have a list of villages to survey and intend to do a lottery to decide which respondents to interview. Or you might have randomized school classes and you will interview all students in those classes but you do not know exactly how many students each class has. In both these cases we can not assign a randomized category to each respondent as we do not know who they are yet. Instead we will randomize a category to the first respondent in the village/class, randomize a category for the second respondent, etc. And in the field the enumerators have lists for each village/class where they cross off each ID being used.

The following list explains the steps needed for this. We will keep using the example where we new which school classes we wanted to interview but we do not know the size of those class. Let's say that we want to collect basic demographic information on all students, we want to do a short survey on 50% of the students and a long survey on 10% of the students.

  • Create a data set with one observation per class if you do not already have that. Make sure that all classes have unique IDs.
  • Expand the data set (code example below) with the maximum number of students you want to interview per class, or the maximum number of students there could be in a class if you always want to interview all students no matter how long they are. If you expect that the highest of number of students in a class is 50, expand the number of observations to 100 so that there is no risk your expectation was too low. We pick the number 99 so that no ID requires three digits.
  • Create a unique ID for each student.
  • Create

There is a risk that the enumerators do not do this properly, but we can easily check that by looking into which IDs are used by each enumerators each day.

If you want to stratify over, for example, you can have two lists. One for male respondents and one with

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This article is part of the topic Randomized Control Trials

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