论文标题

没有留下的任务:知识跟踪的多任务学习和选项跟踪,以进行更好的学生评估

No Task Left Behind: Multi-Task Learning of Knowledge Tracing and Option Tracing for Better Student Assessment

论文作者

An, Suyeong, Kim, Junghoon, Kim, Minsam, Park, Juneyoung

论文摘要

学生评估是AI教育领域(AIED)领域最基本的任务之一。知识追踪(KT)最常见的方法之一是通过预测学生是否正确回答给定问题来评估学生的知识状态。但是,在多项选择(多态)问题的背景下,传统的KT方法受到限制,因为它们仅考虑二进制(二分法)正确性标签(即正确或不正确),并且忽略了学生选择的特定选项。同时,选项跟踪(OT)试图通过预测他们为给定问题选择哪种选项来建模学生,但忽略了正确性信息。在本文中,我们提出了二分法多任务学习(DP-MTL),这是一个多任务学习框架,结合了KT和OT,以进行更精确的学生评估。特别是,我们表明,KT目标是DP-MTL框架中OT的正规化术语,并提出了适当的体系结构,用于在现有的基于深度学习的KT模型之上应用我们的方法。我们通过实验证实,DP-MTL显着改善了KT和OT的性能,并且也有益于下游任务,例如得分预测(SP)。

Student assessment is one of the most fundamental tasks in the field of AI Education (AIEd). One of the most common approach to student assessment is Knowledge Tracing (KT), which evaluates a student's knowledge state by predicting whether the student will answer a given question correctly or not. However, in the context of multiple choice (polytomous) questions, conventional KT approaches are limited in that they only consider the binary (dichotomous) correctness label (i.e., correct or incorrect), and disregard the specific option chosen by the student. Meanwhile, Option Tracing (OT) attempts to model a student by predicting which option they will choose for a given question, but overlooks the correctness information. In this paper, we propose Dichotomous-Polytomous Multi-Task Learning (DP-MTL), a multi-task learning framework that combines KT and OT for more precise student assessment. In particular, we show that the KT objective acts as a regularization term for OT in the DP-MTL framework, and propose an appropriate architecture for applying our method on top of existing deep learning-based KT models. We experimentally confirm that DP-MTL significantly improves both KT and OT performances, and also benefits downstream tasks such as Score Prediction (SP).

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