基于异构图表示学习的样本特征增强模型,适用于少量关系分类

IF 8.1 1区 计算机科学 0 COMPUTER SCIENCE, INFORMATION SYSTEMS
Zhezhe Xing , Yuxin Ye , Rui Song , Yun Teng , Ziheng Li , Jiawen Liu
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引用次数: 0

摘要

少量关系分类(FSRC)旨在通过从有限的样本中学习来预测新的关系。用于 FSRC 的图神经网络(GNN)方法将数据构建为图,通过图表示学习有效捕捉样本特征。然而,它们往往面临着几个挑战:1) 它们往往会忽略来自不同支持集的样本之间的相互作用,并忽略标签中的隐含噪声,从而导致样本特征生成效果不理想。2) 它们难以深入挖掘 FSRC 数据中的各种语义信息。3) 过度平滑和过度拟合限制了模型的深度,对整体性能产生不利影响。为了解决这些问题,我们提出了一种基于异构图神经网络(SRE-HGNN)的 FSRC 样本表示增强模型。该方法利用样本间和类间关联(即标签相互关注)来有效融合特征并生成更具表现力的样本表示。边缘异构 GNN 通过不同的边缘注意力捕捉不同深度的异构信息,从而增强样本特征。此外,我们还引入了一种基于注意力的邻居节点剔除方法,使模型能够堆叠更高层次并提取更深层次的样本间关联,从而提高性能。最后,我们针对 FSRC 任务进行了实验,在两个公共数据集上,SRE-HGNN 的平均准确率分别提高了 1.84% 和 1.02%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sample feature enhancement model based on heterogeneous graph representation learning for few-shot relation classification
Few-Shot Relation Classification (FSRC) aims to predict novel relationships by learning from limited samples. Graph Neural Network (GNN) approaches for FSRC constructs data as graphs, effectively capturing sample features through graph representation learning. However, they often face several challenges: 1) They tend to neglect the interactions between samples from different support sets and overlook the implicit noise in labels, leading to sub-optimal sample feature generation. 2) They struggle to deeply mine the diverse semantic information present in FSRC data. 3) Over-smoothing and overfitting limit the model's depth and adversely affect overall performance. To address these issues, we propose a Sample Representation Enhancement model based on Heterogeneous Graph Neural Network (SRE-HGNN) for FSRC. This method leverages inter-sample and inter-class associations (i.e., label mutual attention) to effectively fuse features and generate more expressive sample representations. Edge-heterogeneous GNNs are employed to enhance sample features by capturing heterogeneous information of varying depths through different edge attentions. Additionally, we introduce an attention-based neighbor node culling method, enabling the model to stack higher levels and extract deeper inter-sample associations, thereby improving performance. Finally, experiments are conducted for the FSRC task, and SRE-HGNN achieves an average accuracy improvement of 1.84% and 1.02% across two public datasets.
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来源期刊
Information Sciences
Information Sciences 工程技术-计算机:信息系统
CiteScore
14.00
自引率
17.30%
发文量
1322
审稿时长
10.4 months
期刊介绍: Informatics and Computer Science Intelligent Systems Applications is an esteemed international journal that focuses on publishing original and creative research findings in the field of information sciences. We also feature a limited number of timely tutorial and surveying contributions. Our journal aims to cater to a diverse audience, including researchers, developers, managers, strategic planners, graduate students, and anyone interested in staying up-to-date with cutting-edge research in information science, knowledge engineering, and intelligent systems. While readers are expected to share a common interest in information science, they come from varying backgrounds such as engineering, mathematics, statistics, physics, computer science, cell biology, molecular biology, management science, cognitive science, neurobiology, behavioral sciences, and biochemistry.
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