Saved in:
Bibliographic Details
Main Authors: Xie, Yuquan, Peng, Shengtao, Yang, Wanqi, Yang, Ming, Gao, Yang
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2407.02547
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866918047084707840
author Xie, Yuquan
Peng, Shengtao
Yang, Wanqi
Yang, Ming
Gao, Yang
author_facet Xie, Yuquan
Peng, Shengtao
Yang, Wanqi
Yang, Ming
Gao, Yang
contents Knowledge Tracing (KT) is a critical task in online education systems, aiming to monitor students' knowledge states throughout a learning period. Common KT approaches involve predicting the probability of a student correctly answering the next question based on their exercise history. However, these methods often suffer from performance degradation when faced with the scarcity of student interactions in new education systems. To address this, we leverage student interactions from existing education systems to mitigate performance degradation caused by limited training data. Nevertheless, these interactions exhibit significant differences since they are derived from different education systems. To address this issue, we propose a domain generalization approach for knowledge tracing, where existing education systems are considered source domains, and new education systems with limited data are considered target domains. Additionally, we design a domain-generalizable knowledge tracing framework (DGKT) that can be applied to any KT model. Specifically, we present a concept aggregation approach designed to reduce conceptual disparities within sequences of student interactions from diverse domains. To further mitigate domain discrepancies, we introduce a novel normalization module called Sequence Instance Normalization (SeqIN). Moreover, to fully leverage exercise information, we propose a new knowledge tracing model tailored for the domain generalization KT task, named Domain-Generalizable Relation-based Knowledge Tracing (DGRKT). Extensive experiments across five benchmark datasets demonstrate that the proposed method performs well despite limited training data.
format Preprint
id arxiv_https___arxiv_org_abs_2407_02547
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Domain Generalizable Knowledge Tracing via Concept Aggregation and Relation-Based Attention
Xie, Yuquan
Peng, Shengtao
Yang, Wanqi
Yang, Ming
Gao, Yang
Artificial Intelligence
Machine Learning
Knowledge Tracing (KT) is a critical task in online education systems, aiming to monitor students' knowledge states throughout a learning period. Common KT approaches involve predicting the probability of a student correctly answering the next question based on their exercise history. However, these methods often suffer from performance degradation when faced with the scarcity of student interactions in new education systems. To address this, we leverage student interactions from existing education systems to mitigate performance degradation caused by limited training data. Nevertheless, these interactions exhibit significant differences since they are derived from different education systems. To address this issue, we propose a domain generalization approach for knowledge tracing, where existing education systems are considered source domains, and new education systems with limited data are considered target domains. Additionally, we design a domain-generalizable knowledge tracing framework (DGKT) that can be applied to any KT model. Specifically, we present a concept aggregation approach designed to reduce conceptual disparities within sequences of student interactions from diverse domains. To further mitigate domain discrepancies, we introduce a novel normalization module called Sequence Instance Normalization (SeqIN). Moreover, to fully leverage exercise information, we propose a new knowledge tracing model tailored for the domain generalization KT task, named Domain-Generalizable Relation-based Knowledge Tracing (DGRKT). Extensive experiments across five benchmark datasets demonstrate that the proposed method performs well despite limited training data.
title Domain Generalizable Knowledge Tracing via Concept Aggregation and Relation-Based Attention
topic Artificial Intelligence
Machine Learning
url https://arxiv.org/abs/2407.02547