Decentralized optimization is increasingly popular in machine learning for its scalability and efficiency. Intuitively, it should also provide better privacy guarantees, as nodes only observe the messages sent by their neighbors in the network graph. But formalizing and quantifying this gain is challenging: existing results are typically limited to Local Differential Privacy (LDP) guarantees that overlook the advantages of decentralization. In this work, we introduce pairwise network differential privacy, a relaxation of LDP that captures the fact that the privacy leakage from a node $u$ to a node $v$ may depend on their relative position in the graph. We then analyze the combination of local noise injection with (simple or randomized) goss...
We consider the problem of inferring the underlying graph topology from smooth graph signals in a no...
The amount of personal data collected in our everyday interactions with connected devices offers gre...
Abstract Enabling accurate analysis of social network data while preserving differential privacy has...
Analyzing data owned by several parties while achieving a good trade-off between utility and privacy...
Thesis: S.M., Massachusetts Institute of Technology, Department of Electrical Engineering and Comput...
Learning from data owned by several parties, as in federated learning, raises challenges regarding t...
39 pagesLearning from data owned by several parties, as in federated learning, raises challenges reg...
With decentralized optimization having increased applications in various domains ranging from machin...
International audienceLearning from data owned by several parties, as in federated learning, raises ...
International audienceGossip protocols are widely used to disseminate information in massive peer-to...
Decentralized algorithms for stochastic optimization and learning rely on the diffusion of informati...
We develop a privacy-preserving distributed strategy over multitask diffusion networks, where each a...
Decentralized optimization enables a network of agents to cooperatively optimize an overall objectiv...
We propose secure multi-party computation techniques for the distributed computation of the average ...
Gossip protocols (also called rumor spreading or epidemic protocols) are widely used to disseminate ...
We consider the problem of inferring the underlying graph topology from smooth graph signals in a no...
The amount of personal data collected in our everyday interactions with connected devices offers gre...
Abstract Enabling accurate analysis of social network data while preserving differential privacy has...
Analyzing data owned by several parties while achieving a good trade-off between utility and privacy...
Thesis: S.M., Massachusetts Institute of Technology, Department of Electrical Engineering and Comput...
Learning from data owned by several parties, as in federated learning, raises challenges regarding t...
39 pagesLearning from data owned by several parties, as in federated learning, raises challenges reg...
With decentralized optimization having increased applications in various domains ranging from machin...
International audienceLearning from data owned by several parties, as in federated learning, raises ...
International audienceGossip protocols are widely used to disseminate information in massive peer-to...
Decentralized algorithms for stochastic optimization and learning rely on the diffusion of informati...
We develop a privacy-preserving distributed strategy over multitask diffusion networks, where each a...
Decentralized optimization enables a network of agents to cooperatively optimize an overall objectiv...
We propose secure multi-party computation techniques for the distributed computation of the average ...
Gossip protocols (also called rumor spreading or epidemic protocols) are widely used to disseminate ...
We consider the problem of inferring the underlying graph topology from smooth graph signals in a no...
The amount of personal data collected in our everyday interactions with connected devices offers gre...
Abstract Enabling accurate analysis of social network data while preserving differential privacy has...