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Towards a robust incomplete data handling approach to effective educational data classification in an academic credit system

机译:朝着学术信用体系中有效教育数据分类的强大不完整的数据处理方法

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摘要

Educational data classification is an educational data mining task which classifies our students based on their study performance. Although many data classification techniques and methods are nowadays available, educational data classification is full of challenges emergent in an academic credit system. One of the challenges often encountered in educational data classification is data incompleteness to early identify in-trouble students. Hence, we aim at a robust approach for this inevitable challenging problem. Different from the existing works on incomplete data handling, our work explores the semantics of incomplete data in the education domain on the application side and the two-phase characteristics of the classification task on the technical side. As a result from an empirical study on real educational data sets with different percentages of incomplete data, it is found that the robust approaches with incomplete data handling based on their semantics in relation to class information can enhance the effectiveness of educational data classifiers.
机译:教育数据分类是一个教育数据挖掘任务,根据他们的学习表现对我们的学生进行分类。虽然如今,许多数据分类技术和方法是可用的,但教育数据分类充满了学校信用体系中的挑战。教育数据分类中经常遇到的挑战之一是早期识别犯罪学生的数据不完整。因此,我们以强大的方法瞄准这种不可避免的具有挑战性的问题。与现有的数据处理有关的不同,我们的工作探讨了在申请侧的教育领域中不完整数据的语义,以及技术方面的分类任务的两相特征。由于对具有不同百分比的不完整数据百分比的实证研究的实证研究,发现基于与类信息相关的语义的数据处理具有不完整数据处理的强大方法可以提高教育数据分类器的有效性。

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