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Main Authors: Wu, Wenhan, He, Zhili, Liang, Huanghuang, Gong, Yili, Jiang, Jiawei, Hu, Chuang, Cheng, Dazhao
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2512.10348
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author Wu, Wenhan
He, Zhili
Liang, Huanghuang
Gong, Yili
Jiang, Jiawei
Hu, Chuang
Cheng, Dazhao
author_facet Wu, Wenhan
He, Zhili
Liang, Huanghuang
Gong, Yili
Jiang, Jiawei
Hu, Chuang
Cheng, Dazhao
contents Data-protection regulations such as the GDPR grant every participant in a federated system a right to be forgotten. Federated unlearning has therefore emerged as a research frontier, aiming to remove a specific party's contribution from the learned model while preserving the utility of the remaining parties. However, most unlearning techniques focus on Horizontal Federated Learning (HFL), where data are partitioned by samples. In contrast, Vertical Federated Learning (VFL) allows organizations that possess complementary feature spaces to train a joint model without sharing raw data. The resulting feature-partitioned architecture renders HFL-oriented unlearning methods ineffective. In this paper, we propose REMISVFU, a plug-and-play representation misdirection framework that enables fast, client-level unlearning in splitVFL systems. When a deletion request arrives, the forgetting party collapses its encoder output to a randomly sampled anchor on the unit sphere, severing the statistical link between its features and the global model. To maintain utility for the remaining parties, the server jointly optimizes a retention loss and a forgetting loss, aligning their gradients via orthogonal projection to eliminate destructive interference. Evaluations on public benchmarks show that REMISVFU suppresses back-door attack success to the natural class-prior level and sacrifices only about 2.5% points of clean accuracy, outperforming state-of-the-art baselines.
format Preprint
id arxiv_https___arxiv_org_abs_2512_10348
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle REMISVFU: Vertical Federated Unlearning via Representation Misdirection for Intermediate Output Feature
Wu, Wenhan
He, Zhili
Liang, Huanghuang
Gong, Yili
Jiang, Jiawei
Hu, Chuang
Cheng, Dazhao
Artificial Intelligence
Data-protection regulations such as the GDPR grant every participant in a federated system a right to be forgotten. Federated unlearning has therefore emerged as a research frontier, aiming to remove a specific party's contribution from the learned model while preserving the utility of the remaining parties. However, most unlearning techniques focus on Horizontal Federated Learning (HFL), where data are partitioned by samples. In contrast, Vertical Federated Learning (VFL) allows organizations that possess complementary feature spaces to train a joint model without sharing raw data. The resulting feature-partitioned architecture renders HFL-oriented unlearning methods ineffective. In this paper, we propose REMISVFU, a plug-and-play representation misdirection framework that enables fast, client-level unlearning in splitVFL systems. When a deletion request arrives, the forgetting party collapses its encoder output to a randomly sampled anchor on the unit sphere, severing the statistical link between its features and the global model. To maintain utility for the remaining parties, the server jointly optimizes a retention loss and a forgetting loss, aligning their gradients via orthogonal projection to eliminate destructive interference. Evaluations on public benchmarks show that REMISVFU suppresses back-door attack success to the natural class-prior level and sacrifices only about 2.5% points of clean accuracy, outperforming state-of-the-art baselines.
title REMISVFU: Vertical Federated Unlearning via Representation Misdirection for Intermediate Output Feature
topic Artificial Intelligence
url https://arxiv.org/abs/2512.10348