Difference between revisions of "De-identification"
Line 1: | Line 1: | ||
De-identification is the process of removing or masking [[Personally Identifiable Information (PII) | personally identifiable information (PII)]] in order to prevent subjects’ identities from being connected with data. De-identification is a critical component of [[Research Ethics | ethical]] [[Protecting Human Research Subjects | human subjects]] research. This page will discuss how to handle and de-identify incoming PII data before [[Data Cleaning | cleaning]], [[Data Analysis | analyzing]], or [[Publishing Data | publishing]] data. | |||
==Read First== | |||
*In general, the research team should always work with and analyze de-identified data, except when planning follow-up data collection or [[Monitoring Data Quality | monitoring]] data. | |||
*Publicly released data or replication data shared with other researchers must always be carefully de-identified. | |||
== | *To de-identify data, 1) drop PII variables not necessary for the analysis, then 2) de-identify PII variables necessary for the analysis by masking, encoding, and anonymizing. For more details on what constitutes PII, see [[Personally Identifiable Information (PII)]]. | ||
In | *Before de-identifying the data, save the raw data to the [[DataWork_Folder#Survey_Encrypted_Data | Survey Encrypted Data Folder]]. The data in this folder should be exactly as you got it: absolutely no changes should be made to it. After de-identifying the data, save the raw, de-identified data to the [[DataWork_Survey_Round#DataSets_Folder#De-identified_Folder | De-identified Folder]]. | ||
* | |||
* | |||
== Data Flow== | |||
The following steps ensure proper handling and storage of PII: | |||
# Save the raw, identified data to the [[DataWork_Folder#Survey_Encrypted_Data | Survey Encrypted Data]] folder, housed in the [[DataWork_Survey_Round#Encrypted_Round_Folder | Encrypted Round Folder]]. The data in this folder should be exactly as you got it: absolutely no changes should be made to it. | |||
# De-identify the data by dropping the PII variables not necessary for analysis and by masking or encoding the PII variables necessary for the analysis. See [[De-identification#How_to_De-identify]] for directions on these processes. Make sure to create [[Reproducible Research | reproducible]] do-files for the de-identification process. Save these do-files in the [[DataWork_Survey_Round#Dofiles_Import | Dofiles Import Folder]], housed in the [[DataWork_Survey_Round#Encrypted_Round_Folder | Encrypted Round Folder]]. | |||
# Save the de-identified data set in the [[DataWork_Survey_Round#DataSets_Folder#De-identified_Folder | De-identified Folder]], housed in the [[DataWork_Survey_Round#DataSets_Folder | DataSets Folder]]. This is the raw data set with which the research team will begin to work. | |||
In general, the research team should only use the data in the [[DataWork_Folder#Survey_Encrypted_Data | Survey Encrypted Data]] folder to plan follow-up data collection or to [[Monitoring Data Quality | monitor]] data quality. Otherwise, the research team should work with de-identified data in the DataSets Folder. If necessary, the research team can work with data sets containing PII for reasons outside of follow-ups and monitoring, given they take special measures to ensure that the data set is secure and protected. However, note that not all file sharing services facilitate secure sharing of encrypted files. | |||
The remainder of this page details how to de-identify a dataset before saving it to the De-Identified Folder. | |||
== | == Dropping PII Not Necessary for Analysis== | ||
To begin de-identification, drop all PII variables not necessary for analysis. This may include household coordinates; birth dates; contact information; IP address; and/or the names of survey respondents, family members, employees, and enumerators. If the research team later needs this information for follow-up surveys, high-frequency checks, [[Back Checks | back-checks]], or other monitoring, they should refer to the [[DataWork_Folder#Survey_Encrypted_Data | Survey Encrypted Data Folder]]. Otherwise, the data regularly handled by the research team should not include this information. | |||
== | == De-identifying PII Necessary for Analysis== | ||
Next, de-identify all PII necessary for analysis by masking or encoding variables. When choosing between methods of masking and encoding, researchers face a trade-off between ensuring data privacy and losing information and thus results quality: different methods alter regression results and inference in different ways. This section details methods and limitations. | |||
In | ===Encoding Categorical Variables=== | ||
Encoding is a process of de-identifying PII categorical variables needed for analysis (i.e. administrative units, ethnicity) by dropping the [https://dimewiki.worldbank.org/wiki/Data_Cleaning#Labels value label] of a factor variable. The unlabeled data then indicates which individuals are in the same group, but not what the group is. When encoding categorical variables, avoid using pre-existing codes such as State codes used by the National Statistics Bureau or another authority, as this would no longer constitute de-identification. Instead, use [https://dimewiki.worldbank.org/wiki/ID_Variable_Properties#Fifth_property:_Anonymous_IDs anonymous IDs] to encode variables. | |||
===Masking Continuous Variables=== | |||
Masking is the process of limiting disclosure of continuous PII variables needed for analysis. Some of the most used methods, as well as their advantages and disadvantages, are discussed below. See [De-identification#Additional_Resources | Additional Resources] for more detailed information on how to implement each of them. | |||
* '''Categorization''' is the process of transforming continuous variables into categorical variables by reporting a variable range rather than its specific value. For example, a 22-year-old individual might be classified as “18 and 25 year old.” The range of each category will depend on how many individual observations exist in each of them. | |||
* '''Micro-aggregation''' is the process of forming groups with a certain number of observations and substituting the individual values with the group mean. This method alters the variable variance and, accordingly, may affect estimation. However, the change in variance is small if the groups are small. | |||
* '''Adding noise''' is the process of creating white noise by generating and adding to the original variable a new variable with mean zero and positive variance. This method alters the original variable’s variance, therefore affecting inference. | |||
* '''Rounding''' is the process of defining, often randomly, a rounding base and rounding each observation to its nearest multiple. | |||
* '''Top-coding''' is used when only a few extreme values can be individually identified. In this process, extremely high values are rounded so that, for example, any farmers producing more than a certain quantity of a crop are assigned that quantity. | |||
When masking a variable, make sure to do so in a way that a third party could not reverse to uncover the true value. For example, if you dislocate every GPS coordinate two kilometers south, one could easily trace the value back to the original coordinates. Similarly, if you create one single noise variable with different values for each observation and add it to multiple variables to de-identify them, their original value can be obtained more easily than if you add different noises to different variables. | |||
It is important to [[Data Documentation | document]] any changes made to variables during de-identification so that researchers can take them into account when conducting analysis and interpreting results. Save this documentation in a secure, encrypted location. | |||
===Anonymizing IDs=== | |||
When a survey sample comes from a previously existing registry, or when survey data needs to be matched to administrative data, it is common to use a pre-existing ID variable from such registry or database (i.e. State codes or clinic registries). Since people outside of the research team have access to these IDs, there is no way to guarantee protection or privacy of the data collected with them. It is best practice to create a new ID variable with no association to the external ID. There are exceptions to this general rule. See [https://dimewiki.worldbank.org/wiki/ID_Variable_Properties#Fifth_property:_Anonymous_IDs Anonymous IDs] for more information on this issue. | |||
== Back to Parent == | == Back to Parent == | ||
This article is part of the topic [[Data Cleaning]] | This article is part of the topic [[Data Cleaning]] | ||
== Additional Resources == | == Additional Resources == | ||
*[https:// | *[https://nces.ed.gov/pubs2011/2011603.pdf Guidelines for Protecting PII from the Institute of Education Sciences] | ||
*[ | *Heffetz and Ligett's [https://pubs.aeaweb.org/doi/pdfplus/10.1257/jep.28.2.75 Privacy and Data Based Research] | ||
*[https:// | *DIME Analytics’ [https://github.com/worldbank/DIME-Resources/blob/master/survey-ethics.pdf Research Ethics & Data Security] | ||
*DIME Analytics' slides on [https://github.com/worldbank/DIME-Resources/blob/master/onboarding-5-encryption.pdf Encryption] | |||
[[Category: Data Cleaning]] [[Category: Publishing Data]] | [[Category: Data Cleaning]] [[Category: Publishing Data]] | ||
Revision as of 21:23, 20 May 2019
De-identification is the process of removing or masking personally identifiable information (PII) in order to prevent subjects’ identities from being connected with data. De-identification is a critical component of ethical human subjects research. This page will discuss how to handle and de-identify incoming PII data before cleaning, analyzing, or publishing data.
Read First
- In general, the research team should always work with and analyze de-identified data, except when planning follow-up data collection or monitoring data.
- Publicly released data or replication data shared with other researchers must always be carefully de-identified.
- To de-identify data, 1) drop PII variables not necessary for the analysis, then 2) de-identify PII variables necessary for the analysis by masking, encoding, and anonymizing. For more details on what constitutes PII, see Personally Identifiable Information (PII).
- Before de-identifying the data, save the raw data to the Survey Encrypted Data Folder. The data in this folder should be exactly as you got it: absolutely no changes should be made to it. After de-identifying the data, save the raw, de-identified data to the De-identified Folder.
Data Flow
The following steps ensure proper handling and storage of PII:
- Save the raw, identified data to the Survey Encrypted Data folder, housed in the Encrypted Round Folder. The data in this folder should be exactly as you got it: absolutely no changes should be made to it.
- De-identify the data by dropping the PII variables not necessary for analysis and by masking or encoding the PII variables necessary for the analysis. See De-identification#How_to_De-identify for directions on these processes. Make sure to create reproducible do-files for the de-identification process. Save these do-files in the Dofiles Import Folder, housed in the Encrypted Round Folder.
- Save the de-identified data set in the De-identified Folder, housed in the DataSets Folder. This is the raw data set with which the research team will begin to work.
In general, the research team should only use the data in the Survey Encrypted Data folder to plan follow-up data collection or to monitor data quality. Otherwise, the research team should work with de-identified data in the DataSets Folder. If necessary, the research team can work with data sets containing PII for reasons outside of follow-ups and monitoring, given they take special measures to ensure that the data set is secure and protected. However, note that not all file sharing services facilitate secure sharing of encrypted files.
The remainder of this page details how to de-identify a dataset before saving it to the De-Identified Folder.
Dropping PII Not Necessary for Analysis
To begin de-identification, drop all PII variables not necessary for analysis. This may include household coordinates; birth dates; contact information; IP address; and/or the names of survey respondents, family members, employees, and enumerators. If the research team later needs this information for follow-up surveys, high-frequency checks, back-checks, or other monitoring, they should refer to the Survey Encrypted Data Folder. Otherwise, the data regularly handled by the research team should not include this information.
De-identifying PII Necessary for Analysis
Next, de-identify all PII necessary for analysis by masking or encoding variables. When choosing between methods of masking and encoding, researchers face a trade-off between ensuring data privacy and losing information and thus results quality: different methods alter regression results and inference in different ways. This section details methods and limitations.
Encoding Categorical Variables
Encoding is a process of de-identifying PII categorical variables needed for analysis (i.e. administrative units, ethnicity) by dropping the value label of a factor variable. The unlabeled data then indicates which individuals are in the same group, but not what the group is. When encoding categorical variables, avoid using pre-existing codes such as State codes used by the National Statistics Bureau or another authority, as this would no longer constitute de-identification. Instead, use anonymous IDs to encode variables.
Masking Continuous Variables
Masking is the process of limiting disclosure of continuous PII variables needed for analysis. Some of the most used methods, as well as their advantages and disadvantages, are discussed below. See [De-identification#Additional_Resources | Additional Resources] for more detailed information on how to implement each of them.
- Categorization is the process of transforming continuous variables into categorical variables by reporting a variable range rather than its specific value. For example, a 22-year-old individual might be classified as “18 and 25 year old.” The range of each category will depend on how many individual observations exist in each of them.
- Micro-aggregation is the process of forming groups with a certain number of observations and substituting the individual values with the group mean. This method alters the variable variance and, accordingly, may affect estimation. However, the change in variance is small if the groups are small.
- Adding noise is the process of creating white noise by generating and adding to the original variable a new variable with mean zero and positive variance. This method alters the original variable’s variance, therefore affecting inference.
- Rounding is the process of defining, often randomly, a rounding base and rounding each observation to its nearest multiple.
- Top-coding is used when only a few extreme values can be individually identified. In this process, extremely high values are rounded so that, for example, any farmers producing more than a certain quantity of a crop are assigned that quantity.
When masking a variable, make sure to do so in a way that a third party could not reverse to uncover the true value. For example, if you dislocate every GPS coordinate two kilometers south, one could easily trace the value back to the original coordinates. Similarly, if you create one single noise variable with different values for each observation and add it to multiple variables to de-identify them, their original value can be obtained more easily than if you add different noises to different variables.
It is important to document any changes made to variables during de-identification so that researchers can take them into account when conducting analysis and interpreting results. Save this documentation in a secure, encrypted location.
Anonymizing IDs
When a survey sample comes from a previously existing registry, or when survey data needs to be matched to administrative data, it is common to use a pre-existing ID variable from such registry or database (i.e. State codes or clinic registries). Since people outside of the research team have access to these IDs, there is no way to guarantee protection or privacy of the data collected with them. It is best practice to create a new ID variable with no association to the external ID. There are exceptions to this general rule. See Anonymous IDs for more information on this issue.
Back to Parent
This article is part of the topic Data Cleaning
Additional Resources
- Guidelines for Protecting PII from the Institute of Education Sciences
- Heffetz and Ligett's Privacy and Data Based Research
- DIME Analytics’ Research Ethics & Data Security
- DIME Analytics' slides on Encryption