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Attempts Prediction by Missing Data Imputation in Engineering Degree

机译:尝试在工程学位中缺少数据估算的预测

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Nowadays, both students performance and its evaluation are important challenges and play a significant role, in general terms. Frequently, the students attempts to pass a specific curriculum subjects, have several fails due to different reasons and, in this context, lack of data adversely affects interesting future analysis for achieving conclusions. As a consequence, data imputation processes must be performed in order to substitute the missing data for estimated values. This paper presents a comparison between two data imputation methods developed by the authors in previous researches, the Adaptive Assignation Algorithm (AAA) based on Multivariate Adaptive Regression Splines (MARS), and the Multivariate Imputation by Chained Equations methodology (MICE). The results obtained demonstrate that both proposed methods achieve good results, specially AAA algorithm.
机译:如今,学生的表现和评估都是一个重要的挑战,并在一般而言。通常,学生试图通过特定的课程主题,由于原因不同,并且在这种情况下,缺乏数据对实现结论的有趣的未来分析产生不利影响。因此,必须执行数据载荷过程以替换丢失的数据以获取估计值。本文介绍了基于多变量自适应回归样条(MARS)的自适应分配算法(AAA)和由链式方程(小鼠)的多变量归档的两个数据估算方法之间的比较。获得的结果表明,两个提出的方法都达到了良好的效果,特别是AAA算法。

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