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Disclosure Analysis: What do RDC Analysts do?

Disclosure Analysis: What do RDC Analysts do?. Research Data Centre Program, Statistics Canada James Chowhan Ontario DLI Training, Queen's University 06-04-04. Note:. The following slides are not intended for use as documentation of disclosure risk control and practices. Outline.

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Disclosure Analysis: What do RDC Analysts do?

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  1. Disclosure Analysis:What do RDC Analysts do? Research Data Centre Program, Statistics Canada James Chowhan Ontario DLI Training, Queen's University 06-04-04

  2. Note: The following slides are not intended for use as documentation of disclosure risk control and practices.

  3. Outline • What do Analysts do? • role in general • disclosure

  4. Role in General • Four Main Tasks: • Administration of Centre • Research Activities • Liaisons • Disclosure Risk Assessment • None of these tasks are mutually exclusive.

  5. Centre Administration • Client administration • Contract management, creating a culture of confidentiality • Data Administration (managing data sets) • STC micro-data and other data sources • Computer Network Administration • Setting up new users, archiving, back-ups, etc… • Physical security maintenance

  6. Research Activities • Proposing, defining and carrying out research projects as an individual or as a part of a team • Contributions to STC flag-ship publications • ie. Canadian Social Trends, Canadian Economic Observer, Health Reports, Juristat, Perspectives on Labour and Income • RDC Information and Technical Bulletin • Forum for current and prospective RDC users to exchange practical information and techniques for analyzing datasets available at the RDCs

  7. Liaisons • Liaise: • with DLI • referrals and promotion • with researchers • consult on proposals & projects • with STC and SMA • with methodologists consultations on content and methods

  8. Disclosure • Disclosure Analysis • Types of Data • Overview of data confidentiality • Different types of disclosure and output • Some examples • Facing the challenge

  9. What is Disclosure Analysis? • Disclosure Analysis concerns assessing the risk related to the attribution of information to a respondent, whether the respondent is an individual or an organization.

  10. Types of microdata • Analytical (confidential) database with direct identifiers removed • Direct access – authorized employee/deemed employee only (RDC) • Indirect data access (Remote Access services/Remote Data Access services) - screening • Data Reduction – e.g. PUMF

  11. Public Use Microdata File (PUMF)What are some of the differences? • Files of anonymous individual records • Created for public research purposes • Follows Statistics Canada’s Policy on Micro-data Release • Expect some forms of data reduction and suppression • Expect suppression of sample design information (cluster, stratification, etc.)

  12. PUMF disclosure risk control • Suppress some indirect identifiers (e.g. small geographical code, race details, etc.) • Avoid unique combination of indirect identifiers that can disclose a response unit (such as gender, age, occupation, chronic conditions, religion, etc.) • Perform Univariate analyses and look for outliers • Sometimes maximum/minimum values are capped • And more…

  13. Why is keeping data confidential so important? • Retain and Respect Public Trust • Most household/population surveys do not have mandatory participation • Respondents volunteer their time and information • Respondents trust Statistics Canada to ensure their privacy and the confidentiality of their information • To ensure future data collection

  14. Confidentiality and Protection • Under the Statistics Act, Statistics Canada must protect the confidentiality of respondents’ data and identity. • Protections: • Physical protection of the data storage area • Protection of the computer systems • Enforcement of data releasers’ and users’ responsibilities to protect respondent confidentiality • Disclosure analysis on output that leaves the restricted data storage area

  15. What types of Information? • Direct Identifiers (name, address, health number, etc.) that uniquely identify a respondent. These are all stripped from released data files. • Indirect Identifiers refer to variables such as age, marital status, occupation, ethnicity, postal code, type of business etc.). When combined they could be used to identify a respondent. • Sensitive variables refer to information or characteristics relating to a respondent’s private life or business which are usually unknown to others (income, illness, behaviour etc.).

  16. The concern is… • Combining indirect identifiers with sensitive variables poses a disclosure risk, but… • It is usually what researchers like to do • to relate specific characteristics of some response groups to some specific activities/characteristics • and how/why they are related • Control method: restricted access, data reduction, disclosure analysis …

  17. Identity Disclosure • Identity Disclosure - When a respondent can be identified from the released data. • Combine identifier with sensitive variables Examples: • Recognition of well-known characteristic by others (e.g. from small well-defined sample) • Self-recognition (e.g., respondent identifies themselves in released output)

  18. Attribute Disclosure • Attribute Disclosure - When confidential information is revealed and can be attributed to an individual or a group. • Such as, all persons with characteristic x have characteristic y Examples: • People in occupation W make $ 50-60,000/year… • 100% of the respondents of age W in area X reported that they experimented with …

  19. Residual Disclosure • Residual disclosure - when confidential information is disclosed by combining previously released output and information. • Extra care is needed where risk of residual disclosure is high, such as • Subsequent cycles of longitudinal data files (e.g. NLSCY, NPHS, etc.) • Sample from dependent surveys (e.g. SLID and LFS) • Research projects using the same data file • Overlapping small geographical area (e.g. Health Region and Economic Region)

  20. Related Outputs (and residual disclosure) • If PUMF as well as analytical outputs using confidential data are released for the same survey, the combined published results should not disclose sensitive information about individual respondents that was suppressed in the PUMF. • That is, from the reported results, it should not be possible to infer information that allows the identification of a PUMF respondent.

  21. Types of outputs (two main types) • Multivariate Analysis (e.g. inferential statistics/model output) • Model parameters such as, regression coefficients, etc. • Hypothesis test results such as, standard errors, p-value, t-statistics, etc. • Descriptive studies (e.g. table output) • Frequencies, percentiles, cross-tabulation, correlation matrix, etc.

  22. To lower disclosure risk General rules we follow for household sample surveys: • Do not report statistics or table cells with small number of respondents (e.g. fewer than 5 respondents) • No anecdotal information may be given about specific respondents • ‘Zero’ and ‘Full’ cell restriction • Min. and Max. value restriction • Saturated models, covariance/correlation matrices treated like underlying tables • And more…..

  23. Some examples…

  24. Low frequency cells F, 0 is a low frequency cell. Solution? • Collapse column ‘M’ and ‘F’ = column ‘total’ • Collapse row ‘1’ and ‘0’ = row ‘total’ • Report either column ‘M’ and row ‘1’ but not along with the ‘total’

  25. Frequency distributions Frequency curve, e.g.: user wishes to release the the value of observation at the 99th percentile * child 1: family 1 child 2: family 1 child 3: family 2 child 4: family 2 child 5: family 3…. If < 5 respondents are above the 99th percentile, there is a problem. One solution is to describe the distribution using the 95th percentile. * If the survey is multilevel (NLSCY), then the 5 or more respondents from level 1 (child) must come from at least 3 different units from level 2 (household).

  26. ‘Zero’ and ‘Full’ cell • (F, 1) is a full cell • (F, 0) is a non-structural zero cell • Both could pose confidentiality problem • (Married, age <12) is a structural zero cell • Not a data confidentiality problem • Not expect anyone to be in this category

  27. Implied tables - residual disclosure • Implied tables are tables produced by subtracting results from one or more published tables from another published table • In this example, ‘non-married’ individuals can easily be calculated

  28. When reporting information… • Writing a report is no different than working with table output, avoid statements such as: • “… responded incomes ranging from $2,498 to $579,789.” • If necessary, give general indications (e.g. “no income was above $600,000”.) • “… all respondents of age 16 reported experimenting with drugs.” • This is equivalent to a full cell situation.

  29. Facing Challenges • No single control of all the releases • Remote Access, PUMFs, RDCs, survey data publications, etc. • Potential residual disclosure • Can residual disclosure be totally accounted for?

  30. The End James Chowhan E-mail: chowhan@mcmaster.ca Phone: (905) 525-9140 x.27967 Web-sites: www.statcan.ca/english/rdc/index.htm http://socserv.socsci.mcmaster.ca/rdc/

  31. Ancillary Slides

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