© 2019 Neural information processing systems foundation. All rights reserved. Statistical tests are at the heart of many scientific tasks. To validate their hypotheses, researchers in medical and social sciences use individuals' data. The sensitivity of participants' data requires the design of statistical tests that ensure the privacy of the individuals in the most efficient way. In this paper, we use the framework of property testing to design algorithms to test the properties of the distribution that the data is drawn from with respect to differential privacy. In particular, we investigate testing two fundamental properties of distributions: (1) testing the equivalence of two distributions when we have unequal numbers of samples from the...
Hypothesis testing is one of the most common types of data analysis and forms the backbone of scient...
International audienceWe address the problem of goodness-of-fit testing for Hölder continuous densit...
In this paper, we consider privacy against hypothesis testing adversaries within a non-stochastic fr...
Recent years have witnessed growing concerns about the privacy of sensitive data. In response to the...
© 2017 by the author(s). We develop differentially private hypothesis testing methods for the small ...
Presented on March 2, 2020 at 10:00 a.m. in the Klaus Advanced Computing Building, Room 1116E.Maryam...
An individual's personal information is gathered by a multitude of different data collectors through...
Kernel two-sample testing is a useful statistical tool in determining whether data samples arise fro...
A statistical hypothesis test determines whether a hypothesis should be rejected based on samples fr...
Analysis of statistical data privacy has emerged as an important area of research. In this work we d...
239 pagesIn modern settings of data analysis, we may be running our algorithms on datasets that are ...
Code and data for the published article. We develop differentially private methods for estimating v...
Producing statistics that respect the privacy of the samples while still maintaining their accuracy ...
Finding anonymization mechanisms to protect personal data is at the heart of machine learning resear...
Finding anonymization mechanisms to protect personal data is at the heart of recent machine learning...
Hypothesis testing is one of the most common types of data analysis and forms the backbone of scient...
International audienceWe address the problem of goodness-of-fit testing for Hölder continuous densit...
In this paper, we consider privacy against hypothesis testing adversaries within a non-stochastic fr...
Recent years have witnessed growing concerns about the privacy of sensitive data. In response to the...
© 2017 by the author(s). We develop differentially private hypothesis testing methods for the small ...
Presented on March 2, 2020 at 10:00 a.m. in the Klaus Advanced Computing Building, Room 1116E.Maryam...
An individual's personal information is gathered by a multitude of different data collectors through...
Kernel two-sample testing is a useful statistical tool in determining whether data samples arise fro...
A statistical hypothesis test determines whether a hypothesis should be rejected based on samples fr...
Analysis of statistical data privacy has emerged as an important area of research. In this work we d...
239 pagesIn modern settings of data analysis, we may be running our algorithms on datasets that are ...
Code and data for the published article. We develop differentially private methods for estimating v...
Producing statistics that respect the privacy of the samples while still maintaining their accuracy ...
Finding anonymization mechanisms to protect personal data is at the heart of machine learning resear...
Finding anonymization mechanisms to protect personal data is at the heart of recent machine learning...
Hypothesis testing is one of the most common types of data analysis and forms the backbone of scient...
International audienceWe address the problem of goodness-of-fit testing for Hölder continuous densit...
In this paper, we consider privacy against hypothesis testing adversaries within a non-stochastic fr...