In this work, we propose differentially private methods for hypothesis testing, model averaging, and model selection for normal linear models. We consider Bayesian methods based on mixtures of $g$-priors and non-Bayesian methods based on likelihood-ratio statistics and information criteria. The procedures are asymptotically consistent and straightforward to implement with existing software. We focus on practical issues such as adjusting critical values so that hypothesis tests have adequate type I error rates and quantifying the uncertainty introduced by the privacy-ensuring mechanisms
Gaussian mixture models are an important tool in Bayesian decision theory. In this study, we focus o...
We propose a novel Bayesian inference framework for distributed differentially private linear regres...
Domains involving sensitive human data, such as health care, human mobility, and online activity, ar...
Summary: In statistical disclosure control, the goal of data analysis is twofold: the information re...
Generalized linear models (GLMs) such as logistic regression are among the most widely used arms in ...
We consider a particular maximum likelihood estimator (MLE) and a computationally-intensive Bayesian...
This dissertation studies the trade-off between differential privacy and statistical accuracy in par...
This paper concerns differentially private Bayesian estimation of the parameters of a population dis...
There has been increasing demand for establishing privacy-preserving methodologies for modern statis...
International audienceWe study how to communicate findings of Bayesian inference to third parties, w...
The protection of private and sensitive data is an important problem of increasing interest due to t...
We study how to communicate findings of Bayesian inference to third parties, while preserving the st...
Algorithms such as Differentially Private SGD enable training machine learning models with formal pr...
Differential privacy (DP) uses a probabilistic framework to measure the level of privacy protection ...
Differential privacy is a mathematically defined concept of data privacy that is based on the idea t...
Gaussian mixture models are an important tool in Bayesian decision theory. In this study, we focus o...
We propose a novel Bayesian inference framework for distributed differentially private linear regres...
Domains involving sensitive human data, such as health care, human mobility, and online activity, ar...
Summary: In statistical disclosure control, the goal of data analysis is twofold: the information re...
Generalized linear models (GLMs) such as logistic regression are among the most widely used arms in ...
We consider a particular maximum likelihood estimator (MLE) and a computationally-intensive Bayesian...
This dissertation studies the trade-off between differential privacy and statistical accuracy in par...
This paper concerns differentially private Bayesian estimation of the parameters of a population dis...
There has been increasing demand for establishing privacy-preserving methodologies for modern statis...
International audienceWe study how to communicate findings of Bayesian inference to third parties, w...
The protection of private and sensitive data is an important problem of increasing interest due to t...
We study how to communicate findings of Bayesian inference to third parties, while preserving the st...
Algorithms such as Differentially Private SGD enable training machine learning models with formal pr...
Differential privacy (DP) uses a probabilistic framework to measure the level of privacy protection ...
Differential privacy is a mathematically defined concept of data privacy that is based on the idea t...
Gaussian mixture models are an important tool in Bayesian decision theory. In this study, we focus o...
We propose a novel Bayesian inference framework for distributed differentially private linear regres...
Domains involving sensitive human data, such as health care, human mobility, and online activity, ar...