具有多层隐私保护功能的联合学习成果预测

IF 3.4 3区 计算机科学 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS Frontiers of Computer Science Pub Date : 2023-12-28 DOI:10.1007/s11704-023-2791-8
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引用次数: 0

摘要

摘要 学习成绩预测(LOP)是教育路线中一个长期存在的关键问题。许多研究为开发有效的模型做出了贡献,但由于隐私保护问题,这些模型往往受到数据短缺和对不同机构普适性低的困扰。为此,本研究利用联盟学习(FL)框架,提出了一种分布式成绩预测模型,命名为 FecMap,该框架保留了本地客户端的隐私数据,并通过全局通用模型与其他客户端进行通信。FecMap 考虑了局部子空间学习(LSL)和多层隐私保护(MPP),前者明确地针对全局特征学习局部特征,后者分层保护隐私特征,包括可共享模型特征和不可共享特征,从而实现特定客户分类器在每个机构 LOP 上的高性能。然后,通过在客户端训练一个由全局部分、局部部分和分类头组成的局部神经网络,并在服务器上平均来自客户端的全局部分,以迭代的方式实现 FecMap,所有数据集都分布在客户端上。为了评估 FecMap 模型,我们收集了三个高等教育数据集,其中包括工科专业学生的学业记录。实验结果表明,与最先进的模型相比,FecMap 模型得益于所提出的 LSL 和 MPP,并在 LOP 任务中取得了稳定的性能。这项研究为联盟学习在学习分析任务中的应用做出了新的尝试,有可能为促进具有隐私保护的个性化教育铺平道路。
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Federated learning-outcome prediction with multi-layer privacy protection

Abstract

Learning-outcome prediction (LOP) is a longstanding and critical problem in educational routes. Many studies have contributed to developing effective models while often suffering from data shortage and low generalization to various institutions due to the privacy-protection issue. To this end, this study proposes a distributed grade prediction model, dubbed FecMap, by exploiting the federated learning (FL) framework that preserves the private data of local clients and communicates with others through a global generalized model. FecMap considers local subspace learning (LSL), which explicitly learns the local features against the global features, and multi-layer privacy protection (MPP), which hierarchically protects the private features, including model-shareable features and not-allowably shared features, to achieve client-specific classifiers of high performance on LOP per institution. FecMap is then achieved in an iteration manner with all datasets distributed on clients by training a local neural network composed of a global part, a local part, and a classification head in clients and averaging the global parts from clients on the server. To evaluate the FecMap model, we collected three higher-educational datasets of student academic records from engineering majors. Experiment results manifest that FecMap benefits from the proposed LSL and MPP and achieves steady performance on the task of LOP, compared with the state-of-the-art models. This study makes a fresh attempt at the use of federated learning in the learning-analytical task, potentially paving the way to facilitating personalized education with privacy protection.

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来源期刊
Frontiers of Computer Science
Frontiers of Computer Science COMPUTER SCIENCE, INFORMATION SYSTEMS-COMPUTER SCIENCE, SOFTWARE ENGINEERING
CiteScore
8.60
自引率
2.40%
发文量
799
审稿时长
6-12 weeks
期刊介绍: Frontiers of Computer Science aims to provide a forum for the publication of peer-reviewed papers to promote rapid communication and exchange between computer scientists. The journal publishes research papers and review articles in a wide range of topics, including: architecture, software, artificial intelligence, theoretical computer science, networks and communication, information systems, multimedia and graphics, information security, interdisciplinary, etc. The journal especially encourages papers from new emerging and multidisciplinary areas, as well as papers reflecting the international trends of research and development and on special topics reporting progress made by Chinese computer scientists.
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