超图对比学习中的增强:合成与生成

Tianxin Wei, Yuning You, Tianlong Chen, Yang Shen, Jingrui He, Zhangyang Wang
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引用次数: 16

摘要

本文旨在通过应用图像/图的对比学习方法(我们称之为HyperGCL),提高超图神经网络在低标签领域的可推广性。我们关注以下问题:如何通过增广来构造超图的对比视图?我们提供两种解决方案。首先,在领域知识的指导下,我们提出了两种用高阶关系编码来扩充超边的方案,并从图结构数据中采用了三种顶点扩充策略。其次,为了以数据驱动的方式寻找更有效的视图,我们首次提出了一个超图生成模型来生成增广视图,然后提出了一种端到端可微管道来联合学习超图增广和模型参数。我们的技术创新体现在超图的制造扩充和生成扩充的设计上。实验结果包括:(i)在HyperGCL中制造的增强中,增强超边提供了最多的数值增益,这意味着结构中的高阶信息通常更具下游相关性;(ii)生成扩充在保留高阶信息方面做得更好,以进一步有利于可推广性;(iii)HyperGCL还提高了超图表示学习的鲁棒性和公平性。代码发布于https://github.com/weitianxin/HyperGCL.
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Augmentations in Hypergraph Contrastive Learning: Fabricated and Generative
This paper targets at improving the generalizability of hypergraph neural networks in the low-label regime, through applying the contrastive learning approach from images/graphs (we refer to it as HyperGCL). We focus on the following question: How to construct contrastive views for hypergraphs via augmentations? We provide the solutions in two folds. First, guided by domain knowledge, we fabricate two schemes to augment hyperedges with higher-order relations encoded, and adopt three vertex augmentation strategies from graph-structured data. Second, in search of more effective views in a data-driven manner, we for the first time propose a hypergraph generative model to generate augmented views, and then an end-to-end differentiable pipeline to jointly learn hypergraph augmentations and model parameters. Our technical innovations are reflected in designing both fabricated and generative augmentations of hypergraphs. The experimental findings include: (i) Among fabricated augmentations in HyperGCL, augmenting hyperedges provides the most numerical gains, implying that higher-order information in structures is usually more downstream-relevant; (ii) Generative augmentations do better in preserving higher-order information to further benefit generalizability; (iii) HyperGCL also boosts robustness and fairness in hypergraph representation learning. Codes are released at https://github.com/weitianxin/HyperGCL.
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