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A Cumulative Increasing Kemelized Nearest-Neighbor Bagging Method for Early Course-Level Study Performance Prediction

机译:一种累积的增加的kemelized最近邻近的早期课程研究性能预测方法

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Early course-level study performance prediction is a significant educational data mining task to forecast the success of each current student in a course using the historical data of the students in the previous same course. This task can be resolved by different machine learning approaches in various educational contexts. However, how easily and effectively a solution is deployed in practice is restricted by many factors. Two main factors that have not yet been discussed simultaneously are incremental mining and interpretability when the task is prolonged course after course. Therefore, in this paper, we propose a novel cumulative increasing kernelized nearest-neighbor bagging method for early course-level study performance prediction. Our method is a lazy learning one with an inherent incremental mining mechanism, defined as an ensemble method. Although it works in a feature space to handle a non-linearly separated data space, interpretability is enabled with instance-based learning and a confidence score of each prediction is further provided for practical applications. Experimental results on several public datasets confirm the effectiveness of our method as compared to other traditional prediction methods and well-known ensemble ones. Its better early predictions can help both students and lecturers make appropriate course changes for students’ ultimate success.
机译:早期课程级别的研究表现预测是一项重要的教育数据挖掘任务,预测每个当前学生在课程中使用前一门学生的历史数据的成功。可以通过各种教育背景下的不同机器学习方法解决此任务。然而,在实践中部署的解决方案有多容易和有效地受到许多因素的限制。尚未同时讨论的两个主要因素是在课程后任务延长的课程时逐步挖掘和可解释性。因此,在本文中,我们提出了一种新型累积增加的核化近期邻近邻近堆垛机,用于早期课程级研究性能预测。我们的方法是一个懒惰的学习,具有固有的增量挖掘机制,定义为一个集合方法。尽管它在特征空间中工作以处理非线性分离的数据空间,但是以基于实例的学习启用解释性,并且还为实际应用提供了每个预测的置信度。与其他传统预测方法和众所周知的集合相比,若干公共数据集的实验结果证实了我们的方法的有效性。其更好的早期预测可以帮助学生和讲师对学生的最终成功进行适当的课程变化。

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