Search Results for author: Jiahuan Luo

Found 6 papers, 3 papers with code

FedPass: Privacy-Preserving Vertical Federated Deep Learning with Adaptive Obfuscation

no code implementations30 Jan 2023 Hanlin Gu, Jiahuan Luo, Yan Kang, Lixin Fan, Qiang Yang

Vertical federated learning (VFL) allows an active party with labeled feature to leverage auxiliary features from the passive parties to improve model performance.

Privacy Preserving Vertical Federated Learning

A Framework for Evaluating Privacy-Utility Trade-off in Vertical Federated Learning

no code implementations8 Sep 2022 Yan Kang, Jiahuan Luo, Yuanqin He, Xiaojin Zhang, Lixin Fan, Qiang Yang

We then use this framework as a guide to comprehensively evaluate a broad range of protection mechanisms against most of the state-of-the-art privacy attacks for three widely-deployed VFL algorithms.

Privacy Preserving Vertical Federated Learning

A Hybrid Self-Supervised Learning Framework for Vertical Federated Learning

1 code implementation18 Aug 2022 Yuanqin He, Yan Kang, Xinyuan Zhao, Jiahuan Luo, Lixin Fan, Yuxing Han, Qiang Yang

In this work, we propose a Federated Hybrid Self-Supervised Learning framework, named FedHSSL, that utilizes cross-party views (i. e., dispersed features) of samples aligned among parties and local views (i. e., augmentation) of unaligned samples within each party to improve the representation learning capability of the VFL joint model.

Inference Attack Representation Learning +2

FedCG: Leverage Conditional GAN for Protecting Privacy and Maintaining Competitive Performance in Federated Learning

2 code implementations16 Nov 2021 Yuezhou Wu, Yan Kang, Jiahuan Luo, Yuanqin He, Qiang Yang

Federated learning (FL) aims to protect data privacy by enabling clients to build machine learning models collaboratively without sharing their private data.

Federated Learning Privacy Preserving

Self-supervised Cross-silo Federated Neural Architecture Search

no code implementations28 Jan 2021 Xinle Liang, Yang Liu, Jiahuan Luo, Yuanqin He, Tianjian Chen, Qiang Yang

Federated Learning (FL) provides both model performance and data privacy for machine learning tasks where samples or features are distributed among different parties.

Neural Architecture Search Vertical Federated Learning

Real-World Image Datasets for Federated Learning

2 code implementations14 Oct 2019 Jiahuan Luo, Xueyang Wu, Yun Luo, Anbu Huang, Yun-Feng Huang, Yang Liu, Qiang Yang

Federated learning is a new machine learning paradigm which allows data parties to build machine learning models collaboratively while keeping their data secure and private.

BIG-bench Machine Learning Federated Learning +1

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