Privacy Preserving Techniques and Their Applications in Elearning

M. Ivanova, Iskra Trifonova
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Abstract

The paper summarizes contemporary methods and techniques for privacy preservation as some challenging issues are analyzed and presented. A bibliometric approach is utilized in order for the "big picture" to be outlined, showing current research status and trending topics. The bibliographic data are taken from scientific database Scopus and processed through specialized software. In addition, a detailed review is also performed to classify problems and solutions in the area of privacy preservation. Special attention is given to possibilities for data privacy protection in intelligent eLearning environments. The role of machine learning for creating more secure data models is pointed out. A conceptual model, summarizing the findings, is proposed.
隐私保护技术及其在电子学习中的应用
本文总结了当前隐私保护的方法和技术,并分析和提出了一些具有挑战性的问题。利用文献计量学方法来概述“大局”,显示当前的研究状况和趋势主题。书目数据取自科学数据库Scopus,并通过专门的软件进行处理。此外,还进行了详细的审查,分类问题和解决方案在隐私保护领域。特别关注智能电子学习环境中数据隐私保护的可能性。指出了机器学习在创建更安全的数据模型方面的作用。提出了一个概念模型,总结了研究结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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