Label Leakage and Protection from Forward Embedding in Vertical Federated Learning

03/02/2022
by   Jiankai Sun, et al.
0

Vertical federated learning (vFL) has gained much attention and been deployed to solve machine learning problems with data privacy concerns in recent years. However, some recent work demonstrated that vFL is vulnerable to privacy leakage even though only the forward intermediate embedding (rather than raw features) and backpropagated gradients (rather than raw labels) are communicated between the involved participants. As the raw labels often contain highly sensitive information, some recent work has been proposed to prevent the label leakage from the backpropagated gradients effectively in vFL. However, these work only identified and defended the threat of label leakage from the backpropagated gradients. None of these work has paid attention to the problem of label leakage from the intermediate embedding. In this paper, we propose a practical label inference method which can steal private labels effectively from the shared intermediate embedding even though some existing protection methods such as label differential privacy and gradients perturbation are applied. The effectiveness of the label attack is inseparable from the correlation between the intermediate embedding and corresponding private labels. To mitigate the issue of label leakage from the forward embedding, we add an additional optimization goal at the label party to limit the label stealing ability of the adversary by minimizing the distance correlation between the intermediate embedding and corresponding private labels. We conducted massive experiments to demonstrate the effectiveness of our proposed protection methods.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
01/18/2023

Label Inference Attack against Split Learning under Regression Setting

As a crucial building block in vertical Federated Learning (vFL), Split ...
research
02/17/2021

Label Leakage and Protection in Two-party Split Learning

In vertical federated learning, two-party split learning has become an i...
research
08/20/2020

NoPeek: Information leakage reduction to share activations in distributed deep learning

For distributed machine learning with sensitive data, we demonstrate how...
research
05/19/2021

User Label Leakage from Gradients in Federated Learning

Federated learning enables multiple users to build a joint model by shar...
research
05/24/2022

Differentially Private AUC Computation in Vertical Federated Learning

Federated learning has gained great attention recently as a privacy-enha...
research
02/04/2023

GAN-based federated learning for label protection in binary classification

As an emerging technique, vertical federated learning collaborates with ...
research
03/10/2022

Clustering Label Inference Attack against Practical Split Learning

Split learning is deemed as a promising paradigm for privacy-preserving ...

Please sign up or login with your details

Forgot password? Click here to reset