高等教育背景下的分析信息系统:期望、现实与趋势

I. Guitart, J. Conesa
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引用次数: 15

摘要

竞争性组织已经实施了商业智能系统,以帮助员工在循证决策的过程中。在大学中使用这些系统将提供一套分析工具,以支持专注于改进其研究和教学活动的学者的决策。例如,就教师而言,它可能有助于更好地了解学生,了解他们如何学习以及如何根据证据改进学习过程。为了有效地实施这些系统,有必要收集学生和教师在学习-教学过程中进行的活动的数据。目前,大多数大学都提供虚拟学习环境(VLE),学生可以在其中进行大部分学习活动。这些环境可能存储有关其用户交互的数据,因此,在教学过程中收集所有代理的信息。我们的建议是采用商业智能的策略,这在组织和大学中都很有用。通过对VLE中存储的大量数据应用分析技术,我们建议为教师和学术项目经理构建仪表板,以帮助他们做出改善短期、中期和长期教学的决策。
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Analytic Information Systems in the Context of Higher Education: Expectations, Reality and Trends
Competitive organizations have implemented systems of business intelligence in order to help employees in the process of evidence-based decision-making. Using these systems in university will provide a set of analytical tools that support decision-making of academics focused to the improvement of their research and teaching activities. In the case of teachers, for example, it may help to better understand students, how they learn and how to improve the learning processes according to evidences. To implement these systems efficiently it is necessary to gather data about the activities students and teachers perform during the learning-teaching process. Currently, most universities provide virtual learning environments (VLE) where students perform most of their learning activities. These environments may store data about the interaction of their users and, therefore, gather information of all the agents during the teaching-learning process. Our proposal is to adopt the strategies of business intelligence, which resulted useful in organizations, to universities. By applying analytic techniques on the large volume of data stored in the VLE, we propose to build dashboards for teachers and academic program managers in order to help them to take decisions that improve teaching in the short, medium and long term.
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