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Application of enhanced analysis model for data mining processes in higher educational system

机译:增强分析模型在高等教育系统数据挖掘过程中的应用

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One of the most important facts in higher education system is quality. It concerns with all the circumstances that allow decision makers to better evaluate and enhance the higher educational organizations. One way to reach the highest level of quality in higher education systems is by improving the decision making procedures on the various processes such as planning, counseling, evaluation and so on. This can be achieved by utilizing the managerial decision makers with valuable implicit knowledge, which is currently unknown to them. This knowledge is hidden among the educational data set and it is extractable through data mining technology. The meaningful knowledge, previously unknown and potentially useful information discovered from raw educational data through data mining techniques are used to assist decision makers to improve the decision-making procedure and to set more enhanced policies for the educational processes. This paper is designed to first present and justify the capabilities of data mining in the context of higher education system by offering an enhanced version of a recently proposed analysis model (DM_EDU) by the author, used for the application of data mining in higher educational system. Then one of the most important sections of the model, "student assessment" sub-process under "evaluation" is implemented in a real world higher education, MMU in Malaysia, to present the ability of data mining in discovering useful patterns. The final result of this application aids managerial MMU decision makers to improve decision-making processes.
机译:高等教育体系中最重要的事实之一就是质量。它涉及所有使决策者能够更好地评估和增强高等教育组织的情况。在高等教育系统中达到最高质量水平的一种方法是通过改进各种过程(例如计划,咨询,评估等)的决策程序。这可以通过利用具有宝贵的隐性知识的管理决策者来实现,而这对于他们来说是未知的。这些知识隐藏在教育数据集中,可以通过数据挖掘技术提取。通过数据挖掘技术从原始教育数据中发现的有意义的知识,以前未知且可能有用的信息将用于帮助决策者改善决策程序并为教育过程设置更多增强的策略。本文旨在通过提供作者最近提出的分析模型(DM_EDU)的增强版本来首先介绍并证明高等教育系统中数据挖掘的能力,该模型用于高等教育系统中的数据挖掘。然后,模型的最重要部分之一,即“评估”下的“学生评估”子过程,在现实世界的高等教育(马来西亚的MMU)中实施,以展示数据挖掘发现有用模式的能力。该应用程序的最终结果有助于管理MMU决策者改善决策过程。

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