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Gaining insight into student satisfaction using comprehensible data mining techniques

机译:使用可理解的数据挖掘技术深入了解学生满意度

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As a consequence of the heightened competition on the education market, the management of educational institutions often attempts to collect information on what drives student satisfaction by e.g. organizing large scale surveys amongst the student population. Until now, this source of potentially very valuable information remains largely untapped. In this study, we address this issue by investigating the applicability of different data mining techniques to identify the main drivers of student satisfaction in two business education institutions. In the end, the resulting models are to be used by the management to support the strategic decision making process. Hence, the aspect of model comprehensibility is considered to be at least equally important as model performance. It is found that data mining techniques are able to select a surprisingly small number of constructs that require attention in order to manage student satisfaction.
机译:教育市场竞争加剧的结果是,教育机构的管理层经常试图收集有关如何通过诸如在学生人群中组织大规模调查。直到现在,这种潜在的非常有价值的信息来源仍未开发。在这项研究中,我们通过调查不同数据挖掘技术的适用性来确定两个企业教育机构中学生满意度的主要驱动因素,从而解决了这一问题。最后,管理层将使用生成的模型来支持战略决策过程。因此,模型可理解性方面与模型性能至少同等重要。发现数据挖掘技术能够选择出令人惊讶的少量结构,这些结构需要注意才能管理学生的满意度。

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