基于知识点和题型的学习预警模型

Yuhang Zou, Zhengzhou Zhu, Yu Liu, Zhenghui Li
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引用次数: 0

摘要

学习预警在适应性学习和个性化教学等诸多教育领域具有重要意义,近几十年来引起了许多研究的关注。为了解决以往研究中预测粒度大的问题。在这项研究中,我们试图构建两个新颖的特征,包括知识点和问题类型,并根据这两类信息预测学生的表现。根据预测结果,我们将预警分为3个级别,并针对不同预警级别的学生提供不同级别的指导和提醒。我们基于141名北京大学学生的两类数据进行了实验。结果表明,与线性回归、RF和Adaboost相比,我们的方法有了显著的改进。实验表明,该模型预测等级与实际数据Pearson相关系数为0.890568,预警等级预测准确率为85.81%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Novel Learning Early-Warning Model Based on Knowledge Points and Question Types
Learning early-warning is of great importance to many educational domains, such as adaptive learning and personalized teaching, and has drawn numerous research attention in recent decades. In order to solve the problem of large prediction granularity in previous study. In this study, we seek to construct two novel features, including knowledge points and question types, and predict students' performance based on the two types of information. According to the predicted results, we divide the early-warning into 3 levels, and provide different levels of guidance and reminders for different warning levels of students. We did experiments based on the two types data of 141 students in Peking University. The result shows that our method has been significantly improved compared with Linear regression, RF and Adaboost. The experiment shows that the model's predicted grades and the real data Pearson correlation coefficient is 0.890568, and the accuracy of predicting warning levels is 85.81%.
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