Data-driven goal setting: Searching optimal badges in the decision forest

Julian Langenhagen
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引用次数: 0

Abstract

Goal setting is vital in learning sciences, but the scientific evaluation of optimal learning goals is underexplored. This study proposes a novel methodological approach to determine optimal learning goals. The data in this study comes from a gamified learning app implemented in an undergraduate accounting course at a large German university. With a combination of decision trees and regression analyses, the goals connected to the badges implemented in the app are evaluated. The results show that the initial badge set already motivated learning strategies that led to better grades on the exam. However, the results indicate that the levels of the goals could be improved, and additional badges could be implemented. In addition to new goal levels, new goal types are also discussed. The findings show that learning goals initially determined by the instructors need to be evaluated to offer an optimal motivational effect. The new methodological approach used in this study can be easily transferred to other learning data sets to provide further insights.

数据驱动的目标设置:在决策林中搜索最佳徽章
目标设定在学习科学中至关重要,但对最佳学习目标的科学评估却没有得到充分的探索。本研究提出了一种新的方法来确定最佳学习目标。这项研究中的数据来自德国一所大型大学的本科生会计课程中使用的游戏化学习应用程序。通过决策树和回归分析的组合,评估与应用程序中实现的徽章相关的目标。结果表明,最初的徽章集已经激励了学习策略,从而在考试中取得了更好的成绩。然而,结果表明,目标的水平可以提高,可以实施额外的徽章。除了新的目标级别,还讨论了新的目标类型。研究结果表明,教师最初确定的学习目标需要进行评估,以提供最佳的激励效果。本研究中使用的新方法可以很容易地转移到其他学习数据集,以提供进一步的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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