运用真假数据差异的叠加泛化预测学生成绩

Atchara Mahaweerawa, Chatree Nilnumpetch, P. Kraipeerapun
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引用次数: 0

摘要

本文将真假数据的差异应用到叠加泛化中。真假数据在堆叠泛化的第0层生成。在第1层,训练从第0层产生的真值数据以及真假度数据的差值。该方法被用于预测泰国Ramkhamhaeng大学计算机科学系本科生的表现。结果表明,与现有的堆叠泛化技术相比,该技术在预测学生成绩方面具有更好的准确性。
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Applying Stacked Generalization with the Difference of Truth and Falsity Data to Predict Student’s Performance
In this paper, the difference of truth and falsity data is applied to stacked generalization. The truth and falsity data are created in level 0 of stacked generalization. In level 1, the truth data produced from level 0 together with the difference of truth and falsity data are trained. This proposed approach is used to predict performance of undergraduate students in the Department of Computer Science, Ramkhamhaeng University, Thailand. It is found that the proposed technique provides better accuracy result than the existing stacked generalization techniques for the prediction of student’s performance.
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