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A proposed framework on hybrid feature selection techniques for handling high dimensional educational data

机译:用于处理高维教育数据的混合特征选择技术的提出框架

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Huge amounts of data in educational datasets may cause the problem in producing quality data. Recently, data mining approach are increasingly used by educational data mining researchers for analyzing the data patterns. However, many research studies have concentrated on selecting suitable learning algorithms instead of performing feature selection process. As a result, these data has problem with computational complexity and spend longer computational time for classification. The main objective of this research is to provide an overview of feature selection techniques that have been used to analyze the most significant features. Then, this research will propose a framework to improve the quality of students' dataset. The proposed framework uses filter and wrapper based technique to support prediction process in future study.
机译:教育数据集中大量数据可能会导致在生产质量数据时出现问题。最近,教育数据挖掘研究人员越来越多地使用数据挖掘方法来分析数据模式。然而,许多研究研究集中在选择合适的学习算法上而不是执行特征选择过程。结果,这些数据具有计算复杂性的问题,并花费更长的分类计算时间。本研究的主要目的是提供专业选择技术的概述,这些技术已被用于分析最重要的特征。然后,该研究将提出一个提高学生数据集的质量的框架。所提出的框架使用基于过滤器和包装器的技术来支持未来的研究中的预测过程。

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