Improving Utility and Security of the Shuffler-based Differential Privacy
For frequency queries, introducing a new algorithm that achieves a better privacy-utility tradeoff via shuffling and a novel protocol that provides better pr...
For frequency queries, introducing a new algorithm that achieves a better privacy-utility tradeoff via shuffling and a novel protocol that provides better pr...
Techniques for collecting data from each service independently and analyzing the data from multiple services jointly, with privacy guarantees. Published in V...
We design and demonstrate a lightweight middleware called DPSAaS, which provides differentially private data-sharing-and-analytics functionality as cloud ser...
Algorithms for answering multi-dimensional analytical (MDA) queries approximately under local differential privacy. Published in SIGMOD 2019.
Techniques for collecting data from each service independently and analyzing the data from multiple services jointly, with privacy guarantees. Published in V...
We design and demonstrate a lightweight middleware called DPSAaS, which provides differentially private data-sharing-and-analytics functionality as cloud ser...
Algorithms for answering multi-dimensional analytical (MDA) queries approximately under local differential privacy. Published in SIGMOD 2019.
FederatedScope is a flexible and comprehensive federated learning platform proposed for tackling the heterogeneity in real-world federated learning applicati...
FederatedScope-GNN is an easy-to-use python package for federated graph learning. We built it upon FederatedScope so that the requirements for expressing fed...
Matrix factorization algorithms for recommender systems under both horizontal and vertical federated settings. Published in VLDB 2022.
We design and demonstrate a lightweight middleware called DPSAaS, which provides differentially private data-sharing-and-analytics functionality as cloud ser...
Algorithms for answering multi-dimensional analytical (MDA) queries approximately under local differential privacy. Published in SIGMOD 2019.
FederatedScope is a flexible and comprehensive federated learning platform proposed for tackling the heterogeneity in real-world federated learning applicati...
We design and demonstrate a lightweight middleware called DPSAaS, which provides differentially private data-sharing-and-analytics functionality as cloud ser...
Techniques for collecting data from each service independently and analyzing the data from multiple services jointly, with privacy guarantees. Published in V...
For frequency queries, introducing a new algorithm that achieves a better privacy-utility tradeoff via shuffling and a novel protocol that provides better pr...
For frequency queries, introducing a new algorithm that achieves a better privacy-utility tradeoff via shuffling and a novel protocol that provides better pr...
For frequency queries, introducing a new algorithm that achieves a better privacy-utility tradeoff via shuffling and a novel protocol that provides better pr...
Matrix factorization algorithms for recommender systems under both horizontal and vertical federated settings. Published in VLDB 2022.
FederatedScope-GNN is an easy-to-use python package for federated graph learning. We built it upon FederatedScope so that the requirements for expressing fed...