Privacy Against Agnostic Inference Attacks in Vertical Federated Learning
Morteza Varasteh

TL;DR
This paper introduces a new agnostic inference attack in vertical federated learning and proposes privacy-preserving schemes that balance privacy and interpretability, validated by experiments.
Contribution
It presents a novel inference attack in VFL and develops privacy-preserving schemes that distort passive party parameters to protect privacy.
Findings
The attack can infer training and prediction data without score awareness.
Using confidence scores improves attack performance.
Proposed PPSs effectively balance privacy and utility.
Abstract
A novel form of inference attack in vertical federated learning (VFL) is proposed, where two parties collaborate in training a machine learning (ML) model. Logistic regression is considered for the VFL model. One party, referred to as the active party, possesses the ground truth labels of the samples in the training phase, while the other, referred to as the passive party, only shares a separate set of features corresponding to these samples. It is shown that the active party can carry out inference attacks on both training and prediction phase samples by acquiring an ML model independently trained on the training samples available to them. This type of inference attack does not require the active party to be aware of the score of a specific sample, hence it is referred to as an agnostic inference attack. It is shown that utilizing the observed confidence scores during the prediction…
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