Gaussian mixture models are an important tool in Bayesian decision theory. In this study, we focus on building such models over statistical database protected under differential privacy. Our approach involves querying necessary statistics from a database and building a Bayesian classifier over the noise added responses generated according to differential privacy. We formally analyze the sensitivity of our query set. Since there are multiple methods to query a statistic, either directly or indirectly, we analyze the sensitivities for different querying methods. Furthermore we establish theoretical bounds for the Bayes error for the univariate (one dimensional) case. We study the Bayes error for the multivariate (high dimensional) case in exp...
Algorithms such as Differentially Private SGD enable training machine learning models with formal pr...
We study how to communicate findings of Bayesian inference to third parties, while preserving the st...
In this work, we propose differentially private methods for hypothesis testing, model averaging, and...
Abstract—As increasing amounts of sensitive personal information is aggregated into data repositorie...
Abstract. Differential privacy is achieved by the introduction of Lapla-cian noise in the response t...
Differential privacy formalises privacy-preserving mechanisms that provide access to a database. Can...
Bayesian inference is an important technique throughout statistics. The essence of Beyesian inferenc...
The protection of private and sensitive data is an important problem of increasing interest due to t...
International audienceDifferential privacy formalises privacy-preserving mechanisms that provide acc...
Differential privacy has seen remarkable success as a rigorous and practical formalization of data p...
Unpublished manuscript.We consider a particular maximum likelihood estimator (MLE) and a computation...
A major challenge for machine learning is increasing the availability of data while respecting the p...
A major challenge for machine learning is increasing the availability of data while respecting the p...
The problem of preserving the privacy of individual entries of a database when responding to linear ...
International audienceWe study how to communicate findings of Bayesian inference to third parties, w...
Algorithms such as Differentially Private SGD enable training machine learning models with formal pr...
We study how to communicate findings of Bayesian inference to third parties, while preserving the st...
In this work, we propose differentially private methods for hypothesis testing, model averaging, and...
Abstract—As increasing amounts of sensitive personal information is aggregated into data repositorie...
Abstract. Differential privacy is achieved by the introduction of Lapla-cian noise in the response t...
Differential privacy formalises privacy-preserving mechanisms that provide access to a database. Can...
Bayesian inference is an important technique throughout statistics. The essence of Beyesian inferenc...
The protection of private and sensitive data is an important problem of increasing interest due to t...
International audienceDifferential privacy formalises privacy-preserving mechanisms that provide acc...
Differential privacy has seen remarkable success as a rigorous and practical formalization of data p...
Unpublished manuscript.We consider a particular maximum likelihood estimator (MLE) and a computation...
A major challenge for machine learning is increasing the availability of data while respecting the p...
A major challenge for machine learning is increasing the availability of data while respecting the p...
The problem of preserving the privacy of individual entries of a database when responding to linear ...
International audienceWe study how to communicate findings of Bayesian inference to third parties, w...
Algorithms such as Differentially Private SGD enable training machine learning models with formal pr...
We study how to communicate findings of Bayesian inference to third parties, while preserving the st...
In this work, we propose differentially private methods for hypothesis testing, model averaging, and...