计算机工程与设计2024,Vol.45Issue(7) :2195-2202.DOI:10.16208/j.issn1000-7024.2024.07.037

基于虚拟节点策略的自监督对比学业预警模型

Self-supervised comparative academic early warning model based on virtual node strategy

王园淋 欧阳勇 高榕 刘锦行 叶志伟
计算机工程与设计2024,Vol.45Issue(7) :2195-2202.DOI:10.16208/j.issn1000-7024.2024.07.037

基于虚拟节点策略的自监督对比学业预警模型

Self-supervised comparative academic early warning model based on virtual node strategy

王园淋 1欧阳勇 1高榕 2刘锦行 1叶志伟1
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作者信息

  • 1. 湖北工业大学计算机学院,湖北武汉 430068
  • 2. 湖北工业大学计算机学院,湖北武汉 430068;南京大学计算机软件新技术国家重点实验室,江苏南京 210023
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摘要

针对大多数学业预警方法忽略了学生社交行为对于学业的影响,且存在数据不平衡问题和长尾分布问题,提出一种基于虚拟节点策略的自监督对比学业预警模型(SCEW).通过图神经网络对学生成绩、学生社交行为进行融合得到联合图嵌入;利用虚拟节点策略缓解数据不平衡问题的影响;基于自更新策略,采用节点级对比学习将自监督学习集成到网络的训练中,缓解长尾分布问题的影响.在真实数据集上的实验结果表明,SCEW模型的性能优于现有的主流方法.

Abstract

To address the fact that most academic early warning methods ignore the impact of student behavior on academics and suffer from data imbalance and long-tail distribution,a self-supervised comparative academic early warning model based on virtual node strategy(SCEW)was proposed.The student achievement,student social behavior and interest behavior were fused through graph neural networks to obtain joint graph embeddings.The impact of the data imbalance problem was mitigated using the proposed virtual node strategy.A self-renewal based strategy was designed to integrate self-supervised learning into the training of the network using node-level contrastive learning,the impact of the long-tail distribution was mitigated.Experimental results on real datasets show that the SCEW model outperforms existing mainstream methods.

关键词

学业预警/学生行为/虚拟节点/数据不平衡/长尾分布/对比学习/自监督学习

Key words

academic early warning/student behavior/virtual node/data imbalance/long-tail distribution/contrast learning/self-supervised learning

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基金项目

南京大学计算机软件新技术国家重点实验室开放课题基金项目(KFKT2021B12)

国家自然科学基金项目(62106070)

湖北省重点研发计划基金项目(2020BAB012)

出版年

2024
计算机工程与设计
中国航天科工集团二院706所

计算机工程与设计

CSTPCD北大核心
影响因子:0.617
ISSN:1000-7024
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