多层次图式知识对比学习

IF 8.9 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE IEEE Transactions on Knowledge and Data Engineering Pub Date : 2024-09-26 DOI:10.1109/TKDE.2024.3466530
Haoran Yang;Yuhao Wang;Xiangyu Zhao;Hongxu Chen;Hongzhi Yin;Qing Li;Guandong Xu
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引用次数: 0

摘要

图形对比学习(GCL)是一种有效的无监督图形表示学习框架,已在众多图形学习应用中得到广泛应用。GCL 的有效性依赖于生成高质量的对比样本,从而增强模型辨别图语义的能力。然而,目前流行的 GCL 方法面临两大挑战:1)在图增强过程中引入噪声;2)生成的样本需要额外存储,从而降低了模型性能。在本文中,我们提出了新颖的 GKCL(即图知识对比学习)和 DGKCL(即蒸馏图知识对比学习)方法,利用多层次图知识创建无噪声对比对。这一框架不仅解决了与噪声相关的难题,还避免了过多的存储需求。此外,我们的方法还结合了知识提炼组件,以优化训练有素的嵌入表,从而缩小模型的规模,同时确保卓越的性能,尤其是在嵌入规模较小的情况下。在三个公共基准数据集上进行的综合实验评估强调了我们所提方法的优点,并阐明了其特性,主要反映了所提方法在不同嵌入大小下的性能,以及蒸馏权重对整体性能的影响。
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Multi-Level Graph Knowledge Contrastive Learning
Graph Contrastive Learning (GCL) stands as a potent framework for unsupervised graph representation learning that has gained traction across numerous graph learning applications. The effectiveness of GCL relies on generating high-quality contrasting samples, enhancing the model’s ability to discern graph semantics. However, the prevailing GCL methods face two key challenges: 1) introducing noise during graph augmentations and 2) requiring additional storage for generated samples, which degrade the model performance. In this paper, we propose novel approaches, GKCL (i.e., Graph Knowledge Contrastive Learning) and DGKCL (i.e., Distilled Graph Knowledge Contrastive Learning), that leverage multi-level graph knowledge to create noise-free contrasting pairs. This framework not only addresses the noise-related challenges but also circumvents excessive storage demands. Furthermore, our method incorporates a knowledge distillation component to optimize the trained embedding tables, reducing the model’s scale while ensuring superior performance, particularly for the scenarios with smaller embedding sizes. Comprehensive experimental evaluations on three public benchmark datasets underscore the merits of our proposed method and elucidate its properties, which primarily reflect the performance of the proposed method equipped with different embedding sizes and how the distillation weight affects the overall performance.
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来源期刊
IEEE Transactions on Knowledge and Data Engineering
IEEE Transactions on Knowledge and Data Engineering 工程技术-工程:电子与电气
CiteScore
11.70
自引率
3.40%
发文量
515
审稿时长
6 months
期刊介绍: The IEEE Transactions on Knowledge and Data Engineering encompasses knowledge and data engineering aspects within computer science, artificial intelligence, electrical engineering, computer engineering, and related fields. It provides an interdisciplinary platform for disseminating new developments in knowledge and data engineering and explores the practicality of these concepts in both hardware and software. Specific areas covered include knowledge-based and expert systems, AI techniques for knowledge and data management, tools, and methodologies, distributed processing, real-time systems, architectures, data management practices, database design, query languages, security, fault tolerance, statistical databases, algorithms, performance evaluation, and applications.
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