学术专业与教育目标相关性的定量研究:数据驱动的方法

A. Yahya, Ibrahim Alyami
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引用次数: 1

摘要

在高等教育中,项目教育对象(ped)是所有项目活动的核心组成部分。本文提出了一种数据驱动的方法来揭示该组件的一个重要方面,即它与程序专业(pm)的相关性。它通过将三个众所周知的数据相关度量,即点互信息、相关系数和比值比,应用于从一组工程项目的自学报告中提取的数据集来实现这一目标。收集到的数据集经过预处理步骤将其转换为合适的表示形式。这涉及到数据清理、使用一组ped标签进行数据注释,以及将每个多ped标签数据实例分解为多个单个ped数据实例的数据投影。应用这三个相关指标得到的结果表明,三个指标在评价pm与ped之间的相关性方面具有显著的一致性。在随后的步骤中,基于获得的PMs-PEDs相关性强度,应用每个PM内PEDs的排名过程,然后在三个指标的排名中执行多数投票,以获得每个PM内PEDs的总体排名。结果表明,每个PM都具有独特的PEDs排名模式,这表明PM的性质在PM-PEDs相关模式中起着关键作用。总的来说,虽然所得结果的因果关系还有待进一步研究,但所获得的定量相关性对院士们非常有益,特别是在设计新方案或审查现有方案时。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Quantitative Investigation of the Correlation Between Academic Program Majors and Educational Objectives: A Data-Driven Approach
In tertiary education, program education objects (PEDs) are a core component around which all program's activities revolve. This paper presents a data-driven approach to uncover an important aspect of this component that is its correlation to program majors (PMs). It does so by applying three well-known data correlation metrics, namely Pointwise Mutual Information, Correlation Coefficient, and Odds Ratio, to a dataset extracted from self-study reports of a set of Engineering programs. The collected dataset has undergone a preprocessing step to transform it into a suitable representation. This involves data cleaning, data annotation using a set of PEDs labels, and data projection to break down each multi-PEDs label data instances into a number of single PEDs data instances. The results obtained from the application of the three correlation metrics show a remarkable consistency among the three metrics in their evaluation of the correlation between PMs and PEDs. In a subsequent step, a ranking procedure of the PEDs within each PM, based on the obtained PMs-PEDs correlation strength, is applied and then a majority vote among the ranks of the three metrics is performed to obtain an overall rank of the PEDs within each PM. The obtained results show that each PM has a unique pattern of PEDs ranks, which suggests that PM nature plays a key role in determining the PM-PEDs correlation pattern. As a general conclusion, although the obtained results need further investigation on their causality correlation, the obtained quantitative correlations are very beneficial to the academicians particularly when designing new programs or reviewing existing ones.
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