To quantify trade-offs between increasing demand for open data sharing and concerns about sensitive information disclosure, statistical data privacy (SDP) methodology analyzes data release mechanisms which sanitize outputs based on confidential data. Two dominant frameworks exist: statistical disclosure control (SDC), and more recent, differential privacy (DP). Despite framing differences, both SDC and DP share the same statistical problems at its core. For inference problems, we may either design optimal release mechanisms and associated estimators that satisfy bounds on disclosure risk, or we may adjust existing sanitized output to create new optimal estimators. Both problems rely on uncertainty quantification in evaluating risk and utili...
With the growing amount of data collected every day, data confidentiality is increasingly at risk. M...
Differential privacy is a formal mathematical framework for quantifying and managing privacy risks. ...
The privacy issue in data publication is critical and has been extensively studied. Correlation is u...
239 pagesIn modern settings of data analysis, we may be running our algorithms on datasets that are ...
While running any experiment, we often have to consider the statistical power to ensure an effective...
Differential privacy (DP) requires that any statistic based on confidential data be released with ad...
Guaranteeing privacy in released data is an important goal for data-producing agencies. There has be...
133 pagesWith vast databases at their disposal, private tech companies can compete with public stati...
There is an ever increasing demand from researchers for access to useful microdata files. However, t...
The purpose of this document is to provide scholars with a comprehensive list of readings relevant t...
A complete archive of the data and programs used in this paper is available via http://doi.org/10.52...
The Internet is shaping our daily lives. On the one hand, social networks like Facebook and Twitter ...
The federal statistical system is experiencing competing pressures for change. On the one hand, for ...
Randomized control trials, RCTs, have become a powerful tool for assessing the impact of interventio...
The federal statistical system is experiencing competing pressures for change. On the one hand, for ...
With the growing amount of data collected every day, data confidentiality is increasingly at risk. M...
Differential privacy is a formal mathematical framework for quantifying and managing privacy risks. ...
The privacy issue in data publication is critical and has been extensively studied. Correlation is u...
239 pagesIn modern settings of data analysis, we may be running our algorithms on datasets that are ...
While running any experiment, we often have to consider the statistical power to ensure an effective...
Differential privacy (DP) requires that any statistic based on confidential data be released with ad...
Guaranteeing privacy in released data is an important goal for data-producing agencies. There has be...
133 pagesWith vast databases at their disposal, private tech companies can compete with public stati...
There is an ever increasing demand from researchers for access to useful microdata files. However, t...
The purpose of this document is to provide scholars with a comprehensive list of readings relevant t...
A complete archive of the data and programs used in this paper is available via http://doi.org/10.52...
The Internet is shaping our daily lives. On the one hand, social networks like Facebook and Twitter ...
The federal statistical system is experiencing competing pressures for change. On the one hand, for ...
Randomized control trials, RCTs, have become a powerful tool for assessing the impact of interventio...
The federal statistical system is experiencing competing pressures for change. On the one hand, for ...
With the growing amount of data collected every day, data confidentiality is increasingly at risk. M...
Differential privacy is a formal mathematical framework for quantifying and managing privacy risks. ...
The privacy issue in data publication is critical and has been extensively studied. Correlation is u...