通过后门认证的垂直联合学习

IF 6.2 2区 计算机科学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS IEEE Transactions on Services Computing Pub Date : 2025-01-29 DOI:10.1109/TSC.2025.3536312
Mengde Han;Tianqing Zhu;Lefeng Zhang;Huan Huo;Wanlei Zhou
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引用次数: 0

摘要

垂直联邦学习(VFL)为机器学习提供了一种新的范例,使不同的实体能够在保持数据隐私的同时协同训练模型。当实体拥有具有相同样本标识符但不同属性的数据集时,这种方法尤其适用。最近的隐私法规强调个人被遗忘的权利,这就要求模型有能力忘记特定的训练数据。主要的挑战是开发一种机制,以消除模型中特定客户端的影响,同时又不清除其他客户端的所有相关数据。我们的研究调查了在VFL框架内删除单个客户端的贡献。我们通过采用一种机制来反转典型的学习轨迹,以提取特定的数据贡献,从而对传统的VFL进行了创新的修改。该方法寻求在预定义约束模型的指导下,使用梯度上升来优化模型性能。我们还引入了一个后门机制来验证遗忘过程的有效性。我们的方法避免了完全访问初始训练数据,也避免了存储参数更新。经验证据表明,结果与从头开始再培训的结果非常接近。利用梯度上升,我们的学习方法解决了VFL中的关键挑战,为该领域的未来发展奠定了基础。
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Vertical Federated Unlearning via Backdoor Certification
Vertical Federated Learning (VFL) offers a novel paradigm in machine learning, enabling distinct entities to train models cooperatively while maintaining data privacy. This method is particularly pertinent when entities possess datasets with identical sample identifiers but diverse attributes. Recent privacy regulations emphasize an individual's right to be forgotten, which necessitates the ability for models to unlearn specific training data. The primary challenge is to develop a mechanism to eliminate the influence of a specific client from a model without erasing all relevant data from other clients. Our research investigates the removal of a single client's contribution within the VFL framework. We introduce an innovative modification to traditional VFL by employing a mechanism that inverts the typical learning trajectory with the objective of extracting specific data contributions. This approach seeks to optimize model performance using gradient ascent, guided by a pre-defined constrained model. We also introduce a backdoor mechanism to verify the effectiveness of the unlearning procedure. Our method avoids fully accessing the initial training data and avoids storing parameter updates. Empirical evidence shows that the results align closely with those achieved by retraining from scratch. Utilizing gradient ascent, our unlearning approach addresses key challenges in VFL, laying the groundwork for future advancements in this domain.
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来源期刊
IEEE Transactions on Services Computing
IEEE Transactions on Services Computing COMPUTER SCIENCE, INFORMATION SYSTEMS-COMPUTER SCIENCE, SOFTWARE ENGINEERING
CiteScore
11.50
自引率
6.20%
发文量
278
审稿时长
>12 weeks
期刊介绍: IEEE Transactions on Services Computing encompasses the computing and software aspects of the science and technology of services innovation research and development. It places emphasis on algorithmic, mathematical, statistical, and computational methods central to services computing. Topics covered include Service Oriented Architecture, Web Services, Business Process Integration, Solution Performance Management, and Services Operations and Management. The transactions address mathematical foundations, security, privacy, agreement, contract, discovery, negotiation, collaboration, and quality of service for web services. It also covers areas like composite web service creation, business and scientific applications, standards, utility models, business process modeling, integration, collaboration, and more in the realm of Services Computing.
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