Asymmetric Private Set Intersection with Applications to Contact Tracing and Private Vertical Federated Machine Learning
read the original abstract
We present a multi-language, cross-platform, open-source library for asymmetric private set intersection (PSI) and PSI-Cardinality (PSI-C). Our protocol combines traditional DDH-based PSI and PSI-C protocols with compression based on Bloom filters that helps reduce communication in the asymmetric setting. Currently, our library supports C++, C, Go, WebAssembly, JavaScript, Python, and Rust, and runs on both traditional hardware (x86) and browser targets. We further apply our library to two use cases: (i) a privacy-preserving contact tracing protocol that is compatible with existing approaches, but improves their privacy guarantees, and (ii) privacy-preserving machine learning on vertically partitioned data.
This paper has not been read by Pith yet.
Forward citations
Cited by 2 Pith papers
-
Quantum Multi-Party Threshold Private Set Intersection with Explicit Cardinality Testing
A quantum multi-party TPSI protocol is constructed with explicit cardinality testing via rotation-based single-photon processing, hidden-label measurements, OLE inner product, and garbled circuits to reveal only the t...
-
Verifiable and Collusion-Resistant Multi-Party Quantum Private Set Operations
Proposes a quantum multi-party TPSI protocol with explicit cardinality testing via hidden-label measurements, OLE inner product, and garbled circuits, with claimed proofs and Qiskit simulations.
discussion (0)
Sign in with ORCID, Apple, or X to comment. Anyone can read and Pith papers without signing in.