利用协同信息改进知识追踪

Ting Long, Jiarui Qin, Jian Shen, Weinan Zhang, Wei Xia, Ruiming Tang, Xiuqiang He, Yong Yu
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引用次数: 15

摘要

知识追踪是在线学习平台的一项重要任务,它通过预测学生正确回答问题的概率来估计学生的知识状态。在过去的几十年里,由于它对学习材料安排等下游任务的重要性,它得到了很多关注。以往基于深度学习的方法都是通过明确的学生内部信息来追踪学生的知识状态,即只考虑个体的历史信息来进行预测。然而,他们忽视了学生之间的信息,这些信息包含了其他有类似问答经历的学生的回答正确性,这可能会提供一些有价值的线索。在此基础上,本文提出了一种充分利用学生间信息进行知识追踪的方法——协同知识追踪(CoKT)。检索具有相似答题经历的同侪学生序列,获取学生间信息,并将学生间信息与学生内部信息相结合,跟踪学生的知识状态,预测学生答题的正确性。我们在四个真实数据集上验证了我们方法的有效性,并将其与11个基线进行了比较。实验结果表明,CoKT具有最佳的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving Knowledge Tracing with Collaborative Information
Knowledge tracing, which estimates students' knowledge states by predicting the probability that they correctly answer questions, is an essential task for online learning platforms. It has gained much attention in the decades due to its importance to downstream tasks like learning material arrangement, etc. The previous deep learning-based methods trace students' knowledge states with the explicitly intra-student information, i.e., they only consider the historical information of individuals to make predictions. However, they neglect the inter-student information, which contains the response correctness of other students who have similar question-answering experiences, may offer some valuable clues. Based on this consideration, we propose a method called Collaborative Knowledge Tracing (CoKT) in this paper, which sufficiently exploits the inter-student information in knowledge tracing. It retrieves the sequences of peer students who have similar question-answering experiences to obtain the inter-student information, and integrates the inter-student information with the intra-student information to trace students' knowledge states and predict their correctness in answering questions. We validate the effectiveness of our method on four real-world datasets and compare it with 11 baselines. The experimental results reveal that CoKT achieves the best performance.
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