We present d3p, a software package designed to help fielding runtime efficient widely-applicable Bayesian inference under differential privacy guarantees. d3p achieves general applicability to a wide range of probabilistic modelling problems by implementing the differentially private variational inference algorithm, allowing users to fit any parametric probabilistic model with a differentiable density function. d3p adopts the probabilistic programming paradigm as a powerful way for the user to flexibly define such models. We demonstrate the use of our software on a hierarchical logistic regression example, showing the expressiveness of the modelling approach as well as the ease of running the parameter inference. We also perform an empirica...
We study the problem of verifying differential privacy for loop-free programs with probabilistic cho...
This technical report discusses three subtleties related to the widely used notion of differential p...
Probabilistic counters are well known tools often used for space-efficient set cardinality estimatio...
We present d3p, a software package designed to help fielding runtime efficient widely-applicable Bay...
This thesis focuses on privacy-preserving statistical inference. We use a probabilistic point of vie...
In this work, we present an extension to the PyTorch deep learning framework which facilitates diffe...
Differential privacy (DP) uses a probabilistic framework to measure the level of privacy protection ...
International audienceWe present PrivInfer, an expressive framework for writing and verifying differ...
We study the problem of verifying differential privacy for loop-free programs with probabilistic cho...
Data analysis has high value both for commercial and research purposes. However, disclosing analysis...
This paper introduces a new method that embeds any Bayesian model used to generate synthetic data an...
International audienceDifferential privacy is a promising formal approach to data privacy, which pro...
Differential privacy (DP) is a key tool in privacy-preserving data analysis. Yet it remains challeng...
Learning population level characteristics from a set of individuals, belonging to the said populatio...
Differential privacy is a de facto standard for statistical computations over databases that contain...
We study the problem of verifying differential privacy for loop-free programs with probabilistic cho...
This technical report discusses three subtleties related to the widely used notion of differential p...
Probabilistic counters are well known tools often used for space-efficient set cardinality estimatio...
We present d3p, a software package designed to help fielding runtime efficient widely-applicable Bay...
This thesis focuses on privacy-preserving statistical inference. We use a probabilistic point of vie...
In this work, we present an extension to the PyTorch deep learning framework which facilitates diffe...
Differential privacy (DP) uses a probabilistic framework to measure the level of privacy protection ...
International audienceWe present PrivInfer, an expressive framework for writing and verifying differ...
We study the problem of verifying differential privacy for loop-free programs with probabilistic cho...
Data analysis has high value both for commercial and research purposes. However, disclosing analysis...
This paper introduces a new method that embeds any Bayesian model used to generate synthetic data an...
International audienceDifferential privacy is a promising formal approach to data privacy, which pro...
Differential privacy (DP) is a key tool in privacy-preserving data analysis. Yet it remains challeng...
Learning population level characteristics from a set of individuals, belonging to the said populatio...
Differential privacy is a de facto standard for statistical computations over databases that contain...
We study the problem of verifying differential privacy for loop-free programs with probabilistic cho...
This technical report discusses three subtleties related to the widely used notion of differential p...
Probabilistic counters are well known tools often used for space-efficient set cardinality estimatio...