基于递归神经网络的在线学习能力预测系统

You-Xuan Huang, N. Huang, J. Tzeng, James Liang, Ching-Wei Su, Yao-Ting Li
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引用次数: 0

摘要

近年来,在线学习系统越来越受到学生和教师的欢迎,因为它们不受时间和空间的限制。为了改善在线学习环境,还提出了一种基于在线机器人的全新在线学习系统QSticker。但是,在线学习系统中还存在着师生不能及时面对面交流,不能关心学生的学习状况的问题,所以如果没有对学生的表现进行适当的分析,就会导致学习条件不佳。过去关于知识追溯的研究有很多。然而,我们发现在某些在线学习环境(如QSticker)中,知识追踪模型不能最优地预测学生对知识概念的熟练程度。因此,我们提出了一种基于门控循环单元(GRU)的熟练度预测系统。由于许多学生在学习中有相似的轨迹,系统使用最直接的练习回答行为数据,包括他的答案的正确性和知识概念的相关性。然后计算其他特征,例如每个知识概念的难度,以预测学生对课程中所有知识概念的熟练程度。已完成的实验表明,我们的模型在收集的数据集上可以达到71%的准确率。借助该系统,我们可以预测学生在学习过程中可能遇到的困难。此外,为了在教学场景中实际应用,我们还为该系统设计了一个分析平台。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Proficiency Prediction System for Online Learning Based on Recurrent Neural Networks
In recent years, online learning systems have become increasingly popular among students and teachers because they are unlimited by time and space. A brand-new online learning system called QSticker, which is based on a line bot, has also been proposed to improve the online learning environment. However, there is still a problem in the online learning system that teachers and students cannot communicate face-to-face in time and care about students' learning status, so if there is not a proper analysis of students' performance, it will lead to poor learning conditions. There have been many pieces of research about knowledge tracing in the past. Nonetheless, we found that the knowledge tracing models cannot optimally predict students' proficiency in knowledge concepts in some online learning environments such as QSticker. Therefore, we proposed a Proficiency Prediction System based on Gated Recurrent Unit (GRU). Since many students have similar trajectories in learning, the system uses the most straightforward exercise answering behavior data, including the correctness of his answer and the knowledge concept correlations. It then calculates other characteristics, such as the difficulty of each knowledge concept, to predict students' proficiency in all knowledge concepts in the course. The accomplished experiments show that our model can achieve 71% accuracy on the collected dataset. With the help of this system, we can predict the difficulties students may encounter in the learning process. In addition, to be practically used in teaching scenarios, we also designed an analysis platform for this system.
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