Abstract—Evaluating the performance of database systems is crucial when database vendors or researchers are developing new technologies. But such evaluation tasks rely heavily on actual data and query workloads that are often unavailable to researchers due to privacy restrictions. To overcome this barrier, we propose a framework for the release of a synthetic database which accurately models selected performance properties of the original database. We improve on prior work on synthetic database generation by providing a formal, rigorous guarantee of privacy. Accuracy is achieved by generating synthetic data using a carefully selected set of statistical properties of the original data which balance privacy loss with relevance to the given qu...
Organizations are increasingly collecting sensitive information about individuals. Extracting value ...
Synthetic data has gained significant momentum thanks to sophisticated machine learning tools that e...
With the growing concerns over data privacy and new regulations like the General Data Protection Reg...
When processing data that contains sensitive information, careful consideration is required with reg...
When processing data that contains sensitive information, careful consideration is required with reg...
When processing data that contains sensitive information, careful consideration is required with reg...
When processing data that contains sensitive information, careful consideration is required with reg...
When processing data that contains sensitive information, careful consideration is required with reg...
This short paper provides a synthesis of the statistical disclosure limitation and computer science ...
Synthetic data generation is a powerful tool for privacy protection when considering public release ...
Abstract—In this paper, differential privacy in the non-interactive setting is considered, with focu...
How can we share sensitive datasets in such a way as to maximize utility while simultaneously safegu...
Synthetic data has been advertised as a silver-bullet solution to privacy-preserving data publishing...
Data privacy is a fundamental ethical goal. We must aim for innovating without exploiting. In order ...
Organizations are increasingly collecting sensitive information about individuals. Extracting value ...
Organizations are increasingly collecting sensitive information about individuals. Extracting value ...
Synthetic data has gained significant momentum thanks to sophisticated machine learning tools that e...
With the growing concerns over data privacy and new regulations like the General Data Protection Reg...
When processing data that contains sensitive information, careful consideration is required with reg...
When processing data that contains sensitive information, careful consideration is required with reg...
When processing data that contains sensitive information, careful consideration is required with reg...
When processing data that contains sensitive information, careful consideration is required with reg...
When processing data that contains sensitive information, careful consideration is required with reg...
This short paper provides a synthesis of the statistical disclosure limitation and computer science ...
Synthetic data generation is a powerful tool for privacy protection when considering public release ...
Abstract—In this paper, differential privacy in the non-interactive setting is considered, with focu...
How can we share sensitive datasets in such a way as to maximize utility while simultaneously safegu...
Synthetic data has been advertised as a silver-bullet solution to privacy-preserving data publishing...
Data privacy is a fundamental ethical goal. We must aim for innovating without exploiting. In order ...
Organizations are increasingly collecting sensitive information about individuals. Extracting value ...
Organizations are increasingly collecting sensitive information about individuals. Extracting value ...
Synthetic data has gained significant momentum thanks to sophisticated machine learning tools that e...
With the growing concerns over data privacy and new regulations like the General Data Protection Reg...