Many applications of machine learning, for example in health care, would benefit from methods that can guarantee privacy of data subjects. Differential privacy (DP) has become established as a standard for protecting learning results. The standard DP algorithms require a single trusted party to have access to the entire data, which is a clear weakness, or add prohibitive amounts of noise. We consider DP Bayesian learning in a distributed setting, where each party only holds a single sample or a few samples of the data. We propose a learning strategy based on a secure multi-party sum function for aggregating summaries from data holders and the Gaussian mechanism for DP. Our method builds on an asymptotically optimal and practically efficient...
In this paper, we apply machine learning to distributed private data owned by multiple data owners, ...
We study how to communicate findings of Bayesian inference to third parties, while preserving the st...
Growing privacy concerns regarding personal data disclosure are contrasting with the constant need o...
Many applications of machine learning, for example in health care, would benefit from methods that c...
We consider the problem of reinforcing federated learning with formal privacy guarantees. We propose...
International audienceDifferential privacy formalises privacy-preserving mechanisms that provide acc...
Using results from PAC-Bayesian bounds in learning theory, we formulate differentially-private learn...
Data is considered the "new oil" in the information society and digital economy. While many commerci...
Motivated by the increasing concern about privacy in nowadays data-intensive online learning systems...
Data is considered the “new oil” in the information society and digital economy. While many commerci...
Distributed data mining applications, such as those dealing with health care, finance, counter-terro...
Federated Learning (FL) is a paradigm for large-scale distributed learning which faces two key chall...
Algorithms such as Differentially Private SGD enable training machine learning models with formal pr...
In this paper, the differential privacy problem in parallel distributed detections is studied in the...
International audienceWe study how to communicate findings of Bayesian inference to third parties, w...
In this paper, we apply machine learning to distributed private data owned by multiple data owners, ...
We study how to communicate findings of Bayesian inference to third parties, while preserving the st...
Growing privacy concerns regarding personal data disclosure are contrasting with the constant need o...
Many applications of machine learning, for example in health care, would benefit from methods that c...
We consider the problem of reinforcing federated learning with formal privacy guarantees. We propose...
International audienceDifferential privacy formalises privacy-preserving mechanisms that provide acc...
Using results from PAC-Bayesian bounds in learning theory, we formulate differentially-private learn...
Data is considered the "new oil" in the information society and digital economy. While many commerci...
Motivated by the increasing concern about privacy in nowadays data-intensive online learning systems...
Data is considered the “new oil” in the information society and digital economy. While many commerci...
Distributed data mining applications, such as those dealing with health care, finance, counter-terro...
Federated Learning (FL) is a paradigm for large-scale distributed learning which faces two key chall...
Algorithms such as Differentially Private SGD enable training machine learning models with formal pr...
In this paper, the differential privacy problem in parallel distributed detections is studied in the...
International audienceWe study how to communicate findings of Bayesian inference to third parties, w...
In this paper, we apply machine learning to distributed private data owned by multiple data owners, ...
We study how to communicate findings of Bayesian inference to third parties, while preserving the st...
Growing privacy concerns regarding personal data disclosure are contrasting with the constant need o...