Statistical agencies face a dual mandate to publish accurate statistics while protecting respondent privacy. Increasing privacy protection requires decreased accuracy. Recognizing this as a resource allocation problem, we propose an economic solution: operate where the marginal cost of increasing privacy equals the marginal benefit. Our model of production, from computer science, assumes data are published using an efficient differentially private algorithm. Optimal choice weighs the demand for accurate statistics against the demand for privacy. Examples from U.S. statistical programs show how our framework can guide decision-making. Further progress requires a better understanding of willingness-to-pay for privacy and statistical accuracy
National statistical agencies around the world publish tabular summaries based on combined employer-...
We consider the problem of designing a survey to aggregate non-verifiable information from a privacy...
The public is becoming increasingly concerned with how their sensitive data is handled. Many sensiti...
Any opinions and conclusions are those of the authors and do not represent the views of the Census B...
This paper has been replaced with http://digitalcommons.ilr.cornell.edu/ldi/37. We consider the prob...
133 pagesWith vast databases at their disposal, private tech companies can compete with public stati...
When Google or the U.S. Census Bureau publish detailed statistics on browsing habits or neighborhood...
We explain why population statistics are provided by public statistical agencies rather than private...
The purpose of this document is to provide scholars with a comprehensive list of readings relevant t...
The U.S. Census Bureau announced, via its Scientific Advisory Committee, that it would protect the p...
The dual problems of respecting citizen privacy and protecting the confidentiality of their data hav...
In a technical treatment, this article establishes the necessity of transparent privacy for drawing ...
Final and Cumulative Annual Report, finalized May 2019Goal: To study the economics of socially effic...
Differential privacy is becoming a gold standard notion of privacy, it offers a guaranteed bound on ...
Abstract—Differential privacy is becoming a gold standard notion of privacy; it offers a guaranteed ...
National statistical agencies around the world publish tabular summaries based on combined employer-...
We consider the problem of designing a survey to aggregate non-verifiable information from a privacy...
The public is becoming increasingly concerned with how their sensitive data is handled. Many sensiti...
Any opinions and conclusions are those of the authors and do not represent the views of the Census B...
This paper has been replaced with http://digitalcommons.ilr.cornell.edu/ldi/37. We consider the prob...
133 pagesWith vast databases at their disposal, private tech companies can compete with public stati...
When Google or the U.S. Census Bureau publish detailed statistics on browsing habits or neighborhood...
We explain why population statistics are provided by public statistical agencies rather than private...
The purpose of this document is to provide scholars with a comprehensive list of readings relevant t...
The U.S. Census Bureau announced, via its Scientific Advisory Committee, that it would protect the p...
The dual problems of respecting citizen privacy and protecting the confidentiality of their data hav...
In a technical treatment, this article establishes the necessity of transparent privacy for drawing ...
Final and Cumulative Annual Report, finalized May 2019Goal: To study the economics of socially effic...
Differential privacy is becoming a gold standard notion of privacy, it offers a guaranteed bound on ...
Abstract—Differential privacy is becoming a gold standard notion of privacy; it offers a guaranteed ...
National statistical agencies around the world publish tabular summaries based on combined employer-...
We consider the problem of designing a survey to aggregate non-verifiable information from a privacy...
The public is becoming increasingly concerned with how their sensitive data is handled. Many sensiti...