We develop a privacy-preserving distributed strategy over multitask diffusion networks, where each agent is interested in not only improving its local inference performance via in-network cooperation, but also protecting its own individual task against privacy leakage. In the proposed strategy, at each time instant, each agent sends a noisy estimate, which is its local intermediate estimate corrupted by a zero-mean additive noise, to its neighboring agents. We derive a sufficient condition to determine the amount of noise to add to each agent's intermediate estimate to achieve an optimal trade-off between the steady-state network mean-square-deviation and an inference privacy constraint. We show that the proposed noise powers are bounded an...
In this paper we propose a novel method for achieving average consensus in a continuous-time multiag...
Individuals sharing information can improve the cost or per-formance of a distributed control system...
Analyzing data owned by several parties while achieving a good trade-off between utility and privacy...
International audienceDistributed optimization allows to address inference problems in a decentraliz...
In this paper, we study a distributed privacy-preserving learning problem in general social networks...
Discrete-time consensus plays a key role in multi-agent systems and distributed protocols. Unfortuna...
The use of private data is pivotal for numerous services including location--based ones, collaborati...
Abstract: This paper studies the problem of privacy-preserving average consensus in multi-agent syst...
Decentralized optimization is increasingly popular in machine learning for its scalability and effic...
Privacy concerns are widely discussed in research and society in general. For the public infrastruct...
We develop a privacy-preserving distributed algorithm to minimize a regularized empirical risk funct...
Distributed estimation over adaptive networks takes advantage of the interconnections between agents...
Controlling the propagation of information in social networks is a problem of growing importance. On...
This paper considers the problem of privacy preservation against passive internal and external malic...
In the activities of data sharing and decentralized processing, data belonging to a user need to be ...
In this paper we propose a novel method for achieving average consensus in a continuous-time multiag...
Individuals sharing information can improve the cost or per-formance of a distributed control system...
Analyzing data owned by several parties while achieving a good trade-off between utility and privacy...
International audienceDistributed optimization allows to address inference problems in a decentraliz...
In this paper, we study a distributed privacy-preserving learning problem in general social networks...
Discrete-time consensus plays a key role in multi-agent systems and distributed protocols. Unfortuna...
The use of private data is pivotal for numerous services including location--based ones, collaborati...
Abstract: This paper studies the problem of privacy-preserving average consensus in multi-agent syst...
Decentralized optimization is increasingly popular in machine learning for its scalability and effic...
Privacy concerns are widely discussed in research and society in general. For the public infrastruct...
We develop a privacy-preserving distributed algorithm to minimize a regularized empirical risk funct...
Distributed estimation over adaptive networks takes advantage of the interconnections between agents...
Controlling the propagation of information in social networks is a problem of growing importance. On...
This paper considers the problem of privacy preservation against passive internal and external malic...
In the activities of data sharing and decentralized processing, data belonging to a user need to be ...
In this paper we propose a novel method for achieving average consensus in a continuous-time multiag...
Individuals sharing information can improve the cost or per-formance of a distributed control system...
Analyzing data owned by several parties while achieving a good trade-off between utility and privacy...