计算机科学 ›› 2026, Vol. 53 ›› Issue (2): 39-47.doi: 10.11896/jsjkx.250600005
杨明, 贺超波, 杨佳琦
YANG Ming, HE Chaobo, YANG Jiaqi
摘要: 知识概念先序关系预测旨在通过挖掘知识概念间的语义和拓扑关系信息补全课程知识图谱,从而提升海量教学资源组织和个性化学习路径规划等下游任务的性能。现有的基于特征工程与深度学习的方法在实体语义信息和先序关系方向性建模方面仍存在局限性,知识概念先序关系预测性能仍有提升的空间。针对该问题,设计了一种基于方向感知孪生网络的知识概念先序关系预测方法DSN-PRL。DSN-PRL首先采用基于对比学习的预训练语言模型BERT学习知识概念的语义表示,然后应用图神经网络聚合多跳拓扑特征以增强层次化结构建模,最后设计方向感知孪生网络,用于学习先序关系的方向性差异以进行预测。在3个基准数据集上进行相关实验,DSN-PRL在多个关键评价指标上均优于现有基线方法,特别是相比表现最优的基线模型DGPL,其精确率分别提升了7.3个百分点,2.7个百分点和11.4个百分点,F1分别提升了1.6个百分点,1.3个百分点和4.3个百分点。
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