Recent years have witnessed growing concerns about the privacy of sensitive data. In response to these concerns, differential privacy has emerged as a rigorous framework for privacy protection, gaining widespread recognition in both academic and industrial circles. While substantial progress has been made in private data analysis, existing methods often suffer from impracticality or a significant loss of statistical efficiency. This paper aims to alleviate these concerns in the context of hypothesis testing by introducing differentially private permutation tests. The proposed framework extends classical non-private permutation tests to private settings, maintaining both finite-sample validity and differential privacy in a rigorous manner. T...
Differential privacy is a cryptographically-motivated approach to privacy that has become a very act...
Analysis of statistical data privacy has emerged as an important area of research. In this work we d...
We propose a test of consistency for two differentially private histograms using parametric bootstra...
Kernel two-sample testing is a useful statistical tool in determining whether data samples arise fro...
© 2019 Neural information processing systems foundation. All rights reserved. Statistical tests are ...
© 2017 by the author(s). We develop differentially private hypothesis testing methods for the small ...
Data analysis is inherently adaptive, where previous results may influence which tests are carried o...
Hypothesis testing is one of the most common types of data analysis and forms the backbone of scient...
International audienceThe challenge of producing accurate statistics while respecting the privacy of...
A statistical hypothesis test determines whether a hypothesis should be rejected based on samples fr...
239 pagesIn modern settings of data analysis, we may be running our algorithms on datasets that are ...
Differential privacy (DP) uses a probabilistic framework to measure the level of privacy protection ...
Since the introduction of differential privacy to the field of privacy preserving data analysis, man...
In this thesis, we study when algorithmic tasks can be performed on sensitive data while protecting ...
Differential privacy is a de facto standard for statistical computations over databases that contain...
Differential privacy is a cryptographically-motivated approach to privacy that has become a very act...
Analysis of statistical data privacy has emerged as an important area of research. In this work we d...
We propose a test of consistency for two differentially private histograms using parametric bootstra...
Kernel two-sample testing is a useful statistical tool in determining whether data samples arise fro...
© 2019 Neural information processing systems foundation. All rights reserved. Statistical tests are ...
© 2017 by the author(s). We develop differentially private hypothesis testing methods for the small ...
Data analysis is inherently adaptive, where previous results may influence which tests are carried o...
Hypothesis testing is one of the most common types of data analysis and forms the backbone of scient...
International audienceThe challenge of producing accurate statistics while respecting the privacy of...
A statistical hypothesis test determines whether a hypothesis should be rejected based on samples fr...
239 pagesIn modern settings of data analysis, we may be running our algorithms on datasets that are ...
Differential privacy (DP) uses a probabilistic framework to measure the level of privacy protection ...
Since the introduction of differential privacy to the field of privacy preserving data analysis, man...
In this thesis, we study when algorithmic tasks can be performed on sensitive data while protecting ...
Differential privacy is a de facto standard for statistical computations over databases that contain...
Differential privacy is a cryptographically-motivated approach to privacy that has become a very act...
Analysis of statistical data privacy has emerged as an important area of research. In this work we d...
We propose a test of consistency for two differentially private histograms using parametric bootstra...