The increasing availability and use of sensitive personal data raises a set of issues regarding the privacy of the individuals behind the data. These concerns become even more important when health data are processed, as are considered sensitive (according to most global regulations). Privacy Enhancing Technologies (PETs) attempt to protect the privacy of individuals whilst preserving the utility of data. One of the most popular technologies recently is Differential Privacy (DP), which was used for the 2020 U.S. Census. Another trend is to combine synthetic data generators with DP to create so-called private synthetic data generators. The objective is to preserve statistical properties as accurately as possible, while the generated data sho...
Data synthesis is a privacy enhancing technology aiming to produce realistic and timely data when re...
We initiate the study of privacy in pharmacogenetics, wherein machine learning models are used to gu...
Drawing insights from data sets provide enormous social value. However, privacy violations are major...
The increased generation of data has become one of the main drivers of technological innovation in h...
Synthetic health data have the potential to mitigate privacy concerns when sharing data to support b...
The proliferation of data in recent years has led to the advancement and utilization of various stat...
Background: Privacy is of increasing interest in the present big data era, particularly the privacy ...
These talks were presented for the Privacy Day Webinar 2022 sponsored by the American Statistical As...
Introduction Demand to access high quality data at the individual level for medical and healthcare ...
Medical data often contain sensitive personal information about individuals, posing significant limi...
Machine learning (ML) can help fight the COVID-19 pandemic by enabling rapid screening of large volu...
When processing data that contains sensitive information, careful consideration is required with reg...
Synthetic data generation is a powerful tool for privacy protection when considering public release ...
International audienceGenerating synthetic data represents an attractive solution for creating open ...
Advances in computation have created high demand for large datasets, which in turn has sparked inter...
Data synthesis is a privacy enhancing technology aiming to produce realistic and timely data when re...
We initiate the study of privacy in pharmacogenetics, wherein machine learning models are used to gu...
Drawing insights from data sets provide enormous social value. However, privacy violations are major...
The increased generation of data has become one of the main drivers of technological innovation in h...
Synthetic health data have the potential to mitigate privacy concerns when sharing data to support b...
The proliferation of data in recent years has led to the advancement and utilization of various stat...
Background: Privacy is of increasing interest in the present big data era, particularly the privacy ...
These talks were presented for the Privacy Day Webinar 2022 sponsored by the American Statistical As...
Introduction Demand to access high quality data at the individual level for medical and healthcare ...
Medical data often contain sensitive personal information about individuals, posing significant limi...
Machine learning (ML) can help fight the COVID-19 pandemic by enabling rapid screening of large volu...
When processing data that contains sensitive information, careful consideration is required with reg...
Synthetic data generation is a powerful tool for privacy protection when considering public release ...
International audienceGenerating synthetic data represents an attractive solution for creating open ...
Advances in computation have created high demand for large datasets, which in turn has sparked inter...
Data synthesis is a privacy enhancing technology aiming to produce realistic and timely data when re...
We initiate the study of privacy in pharmacogenetics, wherein machine learning models are used to gu...
Drawing insights from data sets provide enormous social value. However, privacy violations are major...