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Main Authors: Wang, Shanshan, Yuan, Fangzheng, Wang, Keyang, Yang, Xun, Zhang, Xingyi, Wang, Meng
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2405.16799
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author Wang, Shanshan
Yuan, Fangzheng
Wang, Keyang
Yang, Xun
Zhang, Xingyi
Wang, Meng
author_facet Wang, Shanshan
Yuan, Fangzheng
Wang, Keyang
Yang, Xun
Zhang, Xingyi
Wang, Meng
contents Knowledge tracing has been widely used in online learning systems to guide the students' future learning. However, most existing KT models primarily focus on extracting abundant information from the question sets and explore the relationships between them, but ignore the personalized student behavioral information in the learning process. This will limit the model's ability to accurately capture the personalized knowledge states of students and reasonably predict their performances. To alleviate this limitation, we explicitly models the personalized learning process by incorporating the emotions, a representative personalized behavior in the learning process, into KT framework. Specifically, we present a novel Dual-State Personalized Knowledge Tracing with Emotional Incorporation model to achieve this goal: Firstly, we incorporate emotional information into the modeling process of knowledge state, resulting in the Knowledge State Boosting Module. Secondly, we design an Emotional State Tracing Module to monitor students' personalized emotional states, and propose an emotion prediction method based on personalized emotional states. Finally, we apply the predicted emotions to enhance students' response prediction. Furthermore, to extend the generalization capability of our model across different datasets, we design a transferred version of DEKT, named Transfer Learning-based Self-loop model (T-DEKT). Extensive experiments show our method achieves the state-of-the-art performance.
format Preprint
id arxiv_https___arxiv_org_abs_2405_16799
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Dual-State Personalized Knowledge Tracing with Emotional Incorporation
Wang, Shanshan
Yuan, Fangzheng
Wang, Keyang
Yang, Xun
Zhang, Xingyi
Wang, Meng
Machine Learning
Knowledge tracing has been widely used in online learning systems to guide the students' future learning. However, most existing KT models primarily focus on extracting abundant information from the question sets and explore the relationships between them, but ignore the personalized student behavioral information in the learning process. This will limit the model's ability to accurately capture the personalized knowledge states of students and reasonably predict their performances. To alleviate this limitation, we explicitly models the personalized learning process by incorporating the emotions, a representative personalized behavior in the learning process, into KT framework. Specifically, we present a novel Dual-State Personalized Knowledge Tracing with Emotional Incorporation model to achieve this goal: Firstly, we incorporate emotional information into the modeling process of knowledge state, resulting in the Knowledge State Boosting Module. Secondly, we design an Emotional State Tracing Module to monitor students' personalized emotional states, and propose an emotion prediction method based on personalized emotional states. Finally, we apply the predicted emotions to enhance students' response prediction. Furthermore, to extend the generalization capability of our model across different datasets, we design a transferred version of DEKT, named Transfer Learning-based Self-loop model (T-DEKT). Extensive experiments show our method achieves the state-of-the-art performance.
title Dual-State Personalized Knowledge Tracing with Emotional Incorporation
topic Machine Learning
url https://arxiv.org/abs/2405.16799