Data often contains sensitive information, which poses a major obstacle to publishing it. Some suggest to obfuscate the data or only releasing some data statistics. These approaches have, however, been shown to provide insufficient safeguards against de-anonymisation. Recently, differential privacy (DP), an approach that injects noise into the query answers to provide statistical privacy guarantees, has emerged as a solution to release sensitive data. This study investigates how to continuously release privacy-preserving histograms (or distributions) from online streams of sensitive data by combining DP and semantic web technologies. We focus on distributions, as they are the basis for many analytic applications. Specifically, we propose Si...
Research on differential privacy is generally concerned with examining data sets that are static. Be...
We study how to release summary statistics on a data stream subject to the constraint of differentia...
In the area of industrial process mining, privacy-preserving event data publication is becoming incr...
We study the problem of publishing a stream of real-valued data satisfying differential privacy (DP)...
Many large databases of personal information currently exist in the hands of corporations, nonprofit...
International audienceOpenData movement around the globe is demanding more access to information whi...
While most anonymization technology available today is designed for static and small data, the curre...
Local differential privacy (LDP) is promising for private streaming data collection and analysis. Ho...
Anonymizing private data before release is not enough to reliably protect privacy, as Netflix and AO...
Today, continuous publishing of differentially private query results is the de-facto standard. The c...
The privacy preserving issues have received significant attentions in various domains. Various model...
Massive volumes of sensitive information are being collected for data analytics and machine learning...
In the Open Data approach, governments and other public organisations want to share their datasets w...
Recent growth in the size and scope of databases has resulted in more research into making productiv...
Recent growth in the size and scope of databases has resulted in more research into making productiv...
Research on differential privacy is generally concerned with examining data sets that are static. Be...
We study how to release summary statistics on a data stream subject to the constraint of differentia...
In the area of industrial process mining, privacy-preserving event data publication is becoming incr...
We study the problem of publishing a stream of real-valued data satisfying differential privacy (DP)...
Many large databases of personal information currently exist in the hands of corporations, nonprofit...
International audienceOpenData movement around the globe is demanding more access to information whi...
While most anonymization technology available today is designed for static and small data, the curre...
Local differential privacy (LDP) is promising for private streaming data collection and analysis. Ho...
Anonymizing private data before release is not enough to reliably protect privacy, as Netflix and AO...
Today, continuous publishing of differentially private query results is the de-facto standard. The c...
The privacy preserving issues have received significant attentions in various domains. Various model...
Massive volumes of sensitive information are being collected for data analytics and machine learning...
In the Open Data approach, governments and other public organisations want to share their datasets w...
Recent growth in the size and scope of databases has resulted in more research into making productiv...
Recent growth in the size and scope of databases has resulted in more research into making productiv...
Research on differential privacy is generally concerned with examining data sets that are static. Be...
We study how to release summary statistics on a data stream subject to the constraint of differentia...
In the area of industrial process mining, privacy-preserving event data publication is becoming incr...