网络学习中的隐私保护:探索与分析

M. Ivanova, Iskra Trifonova, G. Bogdanova
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引用次数: 2

摘要

如今,在电子学习环境中收集了大量的数据,跟踪学生的行为和他们在学习活动中的表现。此外,教育数据的一部分被第三方用于统计或研究目的。在许多情况下,数据集的传输和处理没有任何学生身份保护的技术,并且在攻击后有可能泄露私人和敏感数据。本文的目的是介绍对在电子学习环境中收集的数据应用隐私保护算法k-匿名和($\varepsilon,\delta$)-差分隐私进行探索和分析的结果。考虑几个隐私参数,讨论了学生隐私保护与输出信息有用性之间的平衡。机器学习用于预测最合适的隐私模型,并以这种方式支持数据持有人/所有者的决策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Privacy Preservation in eLearning: Exploration and Analysis
Nowadays, a big amount of data is collected in eLearning environments, tracking students’ behavior and their performance of learning activities. Also, a part of educational data is used by third parties for statistical or research purposes. In many cases, the datasets are transferred and processed without any techniques for students’ identity protection and there are possibilities after attacks private and sensitive data to be revealed. The aim of the paper is to present the results from conducted explorations and analysis about applying privacy preserving algorithms k-anonymity and ($\varepsilon,\delta$)-differential privacy on data, collected in eLearning environment. The balance between students’ privacy protection and usefulness of output information is discussed considering several privacy parameters. Machine learning is used to predict the most suitable privacy models and in this way to support the decision making of data holder/owner.
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