Synthetic Data and Confidentiality Protection
September 2003
Working Paper Number:
tp-2003-10
Abstract
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:
analysis,
data,
researcher,
statistical,
study,
respondent,
technology,
technological,
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research,
statistician,
business data,
geographic,
datasets
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identified to contain references to specific institutions, datasets, and other organizations.
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Social Security Administration,
Service Annual Survey,
National Science Foundation,
Decennial Census,
Survey of Income and Program Participation,
Social Security,
Research Data Center,
National Institute on Aging,
Public Use Micro Sample,
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