Guaranteeing privacy in released data is an important goal for data-producing agencies. There has been extensive research on developing suitable privacy mechanisms in recent years. Particularly notable is the idea of noise addition with the guarantee of differential privacy. There are, however, concerns about compromising data utility when very stringent privacy mechanisms are applied. Such compromises can be quite stark in correlated data, such as time series data. Adding white noise to a stochastic process may significantly change the correlation structure, a facet of the process that is essential to optimal prediction. We propose the use of all-pass filtering as a privacy mechanism for regularly sampled time series data, showing that thi...
In a technical treatment, this article establishes the necessity of transparent privacy for drawing ...
Surveys are an important tool for many areas of social science research, but privacy concerns can co...
Differential privacy is known to protect against threats to validity incurred due to adaptive, or ex...
The conference paper can be viewed at: http://www.isoc.org/isoc/conferences/ndss/11/proceedings.shtm...
To quantify trade-offs between increasing demand for open data sharing and concerns about sensitive ...
Time series data mining poses new challenges to privacy. Through extensive experiments, the authors ...
Differential privacy (DP) requires that any statistic based on confidential data be released with ad...
133 pagesWith vast databases at their disposal, private tech companies can compete with public stati...
Privacy-preserving statistical databases are designed to provide information about a population whil...
Thesis: S.M., Massachusetts Institute of Technology, Department of Electrical Engineering and Comput...
Local differential privacy (LDP) is a differential privacy (DP) paradigm in which individuals first ...
Traditional research on preserving privacy in data mining focuses on time-invariant privacy issues. ...
We address one-time publishing of non-overlapping counts with o-differential privacy. These statisti...
We consider the problem of the private release of statistics (like aggregate payrolls) where it is c...
Estimating causal effects from randomized experiments is only feasible if participants agree to reve...
In a technical treatment, this article establishes the necessity of transparent privacy for drawing ...
Surveys are an important tool for many areas of social science research, but privacy concerns can co...
Differential privacy is known to protect against threats to validity incurred due to adaptive, or ex...
The conference paper can be viewed at: http://www.isoc.org/isoc/conferences/ndss/11/proceedings.shtm...
To quantify trade-offs between increasing demand for open data sharing and concerns about sensitive ...
Time series data mining poses new challenges to privacy. Through extensive experiments, the authors ...
Differential privacy (DP) requires that any statistic based on confidential data be released with ad...
133 pagesWith vast databases at their disposal, private tech companies can compete with public stati...
Privacy-preserving statistical databases are designed to provide information about a population whil...
Thesis: S.M., Massachusetts Institute of Technology, Department of Electrical Engineering and Comput...
Local differential privacy (LDP) is a differential privacy (DP) paradigm in which individuals first ...
Traditional research on preserving privacy in data mining focuses on time-invariant privacy issues. ...
We address one-time publishing of non-overlapping counts with o-differential privacy. These statisti...
We consider the problem of the private release of statistics (like aggregate payrolls) where it is c...
Estimating causal effects from randomized experiments is only feasible if participants agree to reve...
In a technical treatment, this article establishes the necessity of transparent privacy for drawing ...
Surveys are an important tool for many areas of social science research, but privacy concerns can co...
Differential privacy is known to protect against threats to validity incurred due to adaptive, or ex...