面向教育4.0的教学数据联盟

Song Guo, Deze Zeng
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引用次数: 3

摘要

教学数据分析已被认为是追求教育4.0的最重要问题之一。近年来信息技术的快速发展,通过提供许多先进的技术,如大数据分析和机器学习,有利于教学数据分析。同时,学生的隐私成为另一个问题,这使得教育机构不愿意共享学生的数据,形成孤立的数据孤岛,阻碍了教学大数据分析的实现。为了应对这一挑战,本文提出了一个基于联邦学习的教育数据分析框架FEEDAN,通过该框架,多个机构可以形成教学数据联盟。他们都不需要彼此直接交换教学数据,他们总是把数据保存在自己的地方,以保证学生的隐私。我们应用我们的框架来分析真实的教学数据。实验结果表明,它不仅保证了学生的隐私,而且确实打破了数据孤岛的边界,实现了更高的分析质量。我们的框架可以在很大程度上接近集中分析的性能,集中分析需要在一个公共的地方收集数据,并且有隐私暴露的风险。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Pedagogical Data Federation toward Education 4.0
Pedagogical data analysis has been recognized as one of the most important issues in pursuing Education 4.0. The recent rapid development of IT technologies benefits pedagogical data analysis via the provisioning of many advanced technologies such as big data analysis and machine learning. Meanwhile, the privacy of the students become another concern and this makes the educational institutions reluctant to share their students' data, forming isolated data islands and hindering the realization of big pedagogical data analysis. To tackle such challenge, in this paper, we propose a federated learning based education data analysis framework FEEDAN, via which pedagogical data federations can be formed by a number of institutions. None of them needs to direct exchange the their pedagogical data with each other and they always keep the data in their own place to guarantee their students' privacy. We apply our framework to analyze real pedagogical data. The experiment results show that it not only guarantees the students' privacy but also indeed breaks the borders of data island by achieving a higher analysis quality. Our framework can much approach the performance of centralized analysis which needs to collect the data in a common place with the risk of privacy exposure.
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