Key-value data is a naturally occurring data type that has not been thoroughly investigated in the local trust model. Existing local differentially private (LDP) solutions for computing statistics over key-value data suffer from the inherent accuracy limitations of each user adding their own noise. Multi-party computation (MPC) maintains better accuracy than LDP and similarly does not require a trusted central party. However, naively applying MPC to key-value data results in prohibitively expensive computation costs. In this work, we present selective multi-party computation, a novel approach to distributed computation that leverages DP leakage to efficiently and accurately compute statistics over key-value data. By providing each party wit...
Secure multi-party computation (MPC) is one of the most important primitives in cryptography. Severa...
Differential privacy is a mathematical definition of privacy for statistical data analysis. It guara...
Data is considered the “new oil” in the information society and digital economy. While many commerci...
We consider a fully decentralized scenario in which no central trusted entity exists and all clients...
Using secure multi-party computation (MPC) to generate noise and add this noise to a function output...
Distributed models for differential privacy (DP), such as the local and shuffle models, allow for di...
We consider the problem of designing scalable, robust protocols for computing statistics about sensi...
We address the problem of learning a machine learning model from training data that originates at mu...
We consider how to perform privacy-preserving analyses on private data from different data providers...
We discuss the widely increasing range of applications of a cryptographic technique called Multi-Par...
We consider the computation of sparse, $(\varepsilon, \delta)$-differentially private~(DP) histogram...
Secure multi-party computation (MPC) enables mutually distrusting parties to compute securely over t...
Classical results in unconditionally secure multi-party computation (MPC) protocols with a passive a...
Encrypting data with a semantically secure cryptosystem guarantees that nothing is learned about the...
Collecting distributed data from millions of individuals for the purpose of analytics is a common sc...
Secure multi-party computation (MPC) is one of the most important primitives in cryptography. Severa...
Differential privacy is a mathematical definition of privacy for statistical data analysis. It guara...
Data is considered the “new oil” in the information society and digital economy. While many commerci...
We consider a fully decentralized scenario in which no central trusted entity exists and all clients...
Using secure multi-party computation (MPC) to generate noise and add this noise to a function output...
Distributed models for differential privacy (DP), such as the local and shuffle models, allow for di...
We consider the problem of designing scalable, robust protocols for computing statistics about sensi...
We address the problem of learning a machine learning model from training data that originates at mu...
We consider how to perform privacy-preserving analyses on private data from different data providers...
We discuss the widely increasing range of applications of a cryptographic technique called Multi-Par...
We consider the computation of sparse, $(\varepsilon, \delta)$-differentially private~(DP) histogram...
Secure multi-party computation (MPC) enables mutually distrusting parties to compute securely over t...
Classical results in unconditionally secure multi-party computation (MPC) protocols with a passive a...
Encrypting data with a semantically secure cryptosystem guarantees that nothing is learned about the...
Collecting distributed data from millions of individuals for the purpose of analytics is a common sc...
Secure multi-party computation (MPC) is one of the most important primitives in cryptography. Severa...
Differential privacy is a mathematical definition of privacy for statistical data analysis. It guara...
Data is considered the “new oil” in the information society and digital economy. While many commerci...