基于图形神经网络(GNN)方法最近已成为处理图数据的流行工具,因为它们能够合并结构信息。GNNS性能的唯一障碍是缺乏标记数据。图像和文本数据的数据增强技术无法用于图形数据,因为图形数据的复杂和非欧几里得结构。这一差距迫使研究人员将注意力转向开发图形数据的数据增强技术。大多数提出的图形数据增强(GDA)技术都是特定于任务的。在本文中,我们根据不同的图形任务调查了现有的GDA技术。这项调查不仅提供了GDA研究界的参考,而且还向其他领域的研究人员提供了必要的信息。
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数据增强已广泛用于图像数据和语言数据,但仍然探索图形神经网络(GNN)。现有方法专注于从全局视角增强图表数据,并大大属于两个类型:具有特征噪声注入的结构操纵和对抗训练。但是,最近的图表数据增强方法忽略了GNNS“消息传递机制的本地信息的重要性。在这项工作中,我们介绍了本地增强,这通过其子图结构增强了节点表示的局部。具体而言,我们将数据增强模拟为特征生成过程。鉴于节点的功能,我们的本地增强方法了解其邻居功能的条件分布,并生成更多邻居功能,以提高下游任务的性能。基于本地增强,我们进一步设计了一个新颖的框架:La-GNN,可以以即插即用的方式应用于任何GNN模型。广泛的实验和分析表明,局部增强一致地对各种基准的各种GNN架构始终如一地产生性能改进。
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In recent years, graph representation learning has achieved remarkable success while suffering from low-quality data problems. As a mature technology to improve data quality in computer vision, data augmentation has also attracted increasing attention in graph domain. For promoting the development of this emerging research direction, in this survey, we comprehensively review and summarize the existing graph data augmentation (GDAug) techniques. Specifically, we first summarize a variety of feasible taxonomies, and then classify existing GDAug studies based on fine-grained graph elements. Furthermore, for each type of GDAug technique, we formalize the general definition, discuss the technical details, and give schematic illustration. In addition, we also summarize common performance metrics and specific design metrics for constructing a GDAug evaluation system. Finally, we summarize the applications of GDAug from both data and model levels, as well as future directions.
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图形结构的数据集通常具有不规则的图表尺寸和连接,渲染使用最近的数据增强技术,例如混合,困难。为了解决这一挑战,我们在名为曲线图移植的图形级别提供了第一个混合图形增强方法,其在数据空间中混合了不规则图。要在图形的各种尺度上定义,我们的方法将子结构标识为可以保留本地信息的混合单元。由于没有特殊考虑上下文的​​基于混合的方法易于产生噪声样本,因此我们的方法明确地使用节点显着信息来选择有意义的子图并自适应地确定标签。我们在多个图形分类基准数据集中广泛地验证了我们多样化的GNN架构,来自不同尺寸的各种图形域。实验结果显示了我们对其他基本数据增强基线的方法的一致优势。我们还证明了曲线图移植在鲁棒性和模型校准方面提高了性能。
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增强图在正规化图形神经网络(GNNS)方面起着至关重要的作用,该图形以信息传递的形式利用沿图的边缘进行信息交换。由于其有效性,简单的边缘和节点操作(例如,添加和删除)已被广泛用于图表增强中。然而,这种常见的增强技术可以显着改变原始图的语义,从而导致过度侵略性增强,从而在GNN学习中拟合不足。为了解决掉落或添加图形边缘和节点引起的此问题,我们提出了SoftEdge,将随机权重分配给给定图的一部分以进行增强。 SoftEdge生成的合成图保持与原始图相同的节点及其连接性,从而减轻原始图的语义变化。我们从经验上表明,这种简单的方法获得了与流行节点和边缘操纵方法的卓越精度,并且具有明显的弹性,可抵御GNN深度的准确性降解。
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Graph machine learning has been extensively studied in both academia and industry. Although booming with a vast number of emerging methods and techniques, most of the literature is built on the in-distribution hypothesis, i.e., testing and training graph data are identically distributed. However, this in-distribution hypothesis can hardly be satisfied in many real-world graph scenarios where the model performance substantially degrades when there exist distribution shifts between testing and training graph data. To solve this critical problem, out-of-distribution (OOD) generalization on graphs, which goes beyond the in-distribution hypothesis, has made great progress and attracted ever-increasing attention from the research community. In this paper, we comprehensively survey OOD generalization on graphs and present a detailed review of recent advances in this area. First, we provide a formal problem definition of OOD generalization on graphs. Second, we categorize existing methods into three classes from conceptually different perspectives, i.e., data, model, and learning strategy, based on their positions in the graph machine learning pipeline, followed by detailed discussions for each category. We also review the theories related to OOD generalization on graphs and introduce the commonly used graph datasets for thorough evaluations. Finally, we share our insights on future research directions. This paper is the first systematic and comprehensive review of OOD generalization on graphs, to the best of our knowledge.
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图形神经网络是一种强大的深度学习工具,用于建模图形结构化数据,在众多图形学习任务上表现出了出色的性能。为了解决深图学习中的数据噪声和数据稀缺性问题,最近有关图形数据的研究已加剧。但是,常规数据增强方法几乎无法处理具有多模式性的非欧几里得空间中定义的图形结构化数据。在这项调查中,我们正式提出了图数据扩展的问题,并进一步审查了代表性技术及其在不同深度学习问题中的应用。具体而言,我们首先提出了图形数据扩展技术的分类法,然后通过根据增强信息方式对相关工作进行分类,从而提供结构化的审查。此外,我们总结了以数据为中心的深图学习中两个代表性问题中图数据扩展的应用:(1)可靠的图形学习,重点是增强输入图的实用性以及通过图数据增强的模型容量; (2)低资源图学习,其针对通过图数据扩大标记的训练数据量表的目标。对于每个问题,我们还提供层次结构问题分类法,并审查与图数据增强相关的现有文献。最后,我们指出了有希望的研究方向和未来研究的挑战。
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近年来,图形神经网络(GNNS)已实现了节点分类的最新性能。但是,大多数现有的GNN会遭受图形不平衡问题。在许多实际情况下,节点类都是不平衡的,其中一些多数类构成了图的大部分部分。 GNN中的消息传播机制将进一步扩大这些多数类的主导地位,从而导致次级分类性能。在这项工作中,我们试图通过生成少数族裔类实例来平衡培训数据,从而扩展了以前的基于过度采样的技术来解决这个问题。此任务是不平凡的,因为这些技术的设计是实例是独立的。忽视关系信息会使此过采样过程变得复杂。此外,节点分类任务通常仅使用少数标记的节点进行半监督设置,从而为少数族裔实例的产生提供了不足的监督。生成的低质量新节点会损害训练有素的分类器。在这项工作中,我们通过在构造的嵌入空间中综合新节点来解决这些困难,该节点编码节点属性和拓扑信息。此外,对边缘生成器进行同时训练,以建模图结构并为新样品提供关系。为了进一步提高数据效率,我们还探索合成的混合``中间''节点在此过度采样过程中利用多数类的节点。对现实世界数据集的实验验证了我们提出的框架的有效性。
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关于图表的深度学习最近吸引了重要的兴趣。然而,大多数作品都侧重于(半)监督学习,导致缺点包括重标签依赖,普遍性差和弱势稳健性。为了解决这些问题,通过良好设计的借口任务在不依赖于手动标签的情况下提取信息知识的自我监督学习(SSL)已成为图形数据的有希望和趋势的学习范例。与计算机视觉和自然语言处理等其他域的SSL不同,图表上的SSL具有独家背景,设计理念和分类。在图表的伞下自我监督学习,我们对采用图表数据采用SSL技术的现有方法及时及全面的审查。我们构建一个统一的框架,数学上正式地规范图表SSL的范例。根据借口任务的目标,我们将这些方法分为四类:基于生成的,基于辅助性的,基于对比的和混合方法。我们进一步描述了曲线图SSL在各种研究领域的应用,并总结了绘图SSL的常用数据集,评估基准,性能比较和开源代码。最后,我们讨论了该研究领域的剩余挑战和潜在的未来方向。
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图形神经网络(GNN),图数据上深度神经网络的概括已被广泛用于各个领域,从药物发现到推荐系统。但是,当可用样本很少的情况下,这些应用程序的GNN是有限的。元学习一直是解决机器学习中缺乏样品的重要框架,近年来,研究人员已经开始将元学习应用于GNNS。在这项工作中,我们提供了对涉及GNN的不同元学习方法的综合调查,这些方法在各种图表中显示出使用这两种方法的力量。我们根据提出的架构,共享表示和应用程序分类文献。最后,我们讨论了几个激动人心的未来研究方向和打开问题。
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We present the OPEN GRAPH BENCHMARK (OGB), a diverse set of challenging and realistic benchmark datasets to facilitate scalable, robust, and reproducible graph machine learning (ML) research. OGB datasets are large-scale, encompass multiple important graph ML tasks, and cover a diverse range of domains, ranging from social and information networks to biological networks, molecular graphs, source code ASTs, and knowledge graphs. For each dataset, we provide a unified evaluation protocol using meaningful application-specific data splits and evaluation metrics. In addition to building the datasets, we also perform extensive benchmark experiments for each dataset. Our experiments suggest that OGB datasets present significant challenges of scalability to large-scale graphs and out-of-distribution generalization under realistic data splits, indicating fruitful opportunities for future research. Finally, OGB provides an automated end-to-end graph ML pipeline that simplifies and standardizes the process of graph data loading, experimental setup, and model evaluation. OGB will be regularly updated and welcomes inputs from the community. OGB datasets as well as data loaders, evaluation scripts, baseline code, and leaderboards are publicly available at https://ogb.stanford.edu.
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Deep learning has revolutionized many machine learning tasks in recent years, ranging from image classification and video processing to speech recognition and natural language understanding. The data in these tasks are typically represented in the Euclidean space. However, there is an increasing number of applications where data are generated from non-Euclidean domains and are represented as graphs with complex relationships and interdependency between objects. The complexity of graph data has imposed significant challenges on existing machine learning algorithms. Recently, many studies on extending deep learning approaches for graph data have emerged. In this survey, we provide a comprehensive overview of graph neural networks (GNNs) in data mining and machine learning fields. We propose a new taxonomy to divide the state-of-the-art graph neural networks into four categories, namely recurrent graph neural networks, convolutional graph neural networks, graph autoencoders, and spatial-temporal graph neural networks. We further discuss the applications of graph neural networks across various domains and summarize the open source codes, benchmark data sets, and model evaluation of graph neural networks. Finally, we propose potential research directions in this rapidly growing field.
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Graph Neural Networks (GNNs) have been widely applied to different tasks such as bioinformatics, drug design, and social networks. However, recent studies have shown that GNNs are vulnerable to adversarial attacks which aim to mislead the node or subgraph classification prediction by adding subtle perturbations. Detecting these attacks is challenging due to the small magnitude of perturbation and the discrete nature of graph data. In this paper, we propose a general adversarial edge detection pipeline EDoG without requiring knowledge of the attack strategies based on graph generation. Specifically, we propose a novel graph generation approach combined with link prediction to detect suspicious adversarial edges. To effectively train the graph generative model, we sample several sub-graphs from the given graph data. We show that since the number of adversarial edges is usually low in practice, with low probability the sampled sub-graphs will contain adversarial edges based on the union bound. In addition, considering the strong attacks which perturb a large number of edges, we propose a set of novel features to perform outlier detection as the preprocessing for our detection. Extensive experimental results on three real-world graph datasets including a private transaction rule dataset from a major company and two types of synthetic graphs with controlled properties show that EDoG can achieve above 0.8 AUC against four state-of-the-art unseen attack strategies without requiring any knowledge about the attack type; and around 0.85 with knowledge of the attack type. EDoG significantly outperforms traditional malicious edge detection baselines. We also show that an adaptive attack with full knowledge of our detection pipeline is difficult to bypass it.
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保持个人特征和复杂的关系,广泛利用和研究了图表数据。通过更新和聚合节点的表示,能够捕获结构信息,图形神经网络(GNN)模型正在获得普及。在财务背景下,该图是基于实际数据构建的,这导致复杂的图形结构,因此需要复杂的方法。在这项工作中,我们在最近的财务环境中对GNN模型进行了全面的审查。我们首先将普通使用的财务图分类并总结每个节点的功能处理步骤。然后,我们总结了每个地图类型的GNN方法,每个区域的应用,并提出一些潜在的研究领域。
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图形神经网络(GNNS)在建模图形结构数据方面表明了它们的能力。但是,实际图形通常包含结构噪声并具有有限的标记节点。当在这些图表中培训时,GNN的性能会显着下降,这阻碍了许多应用程序的GNN。因此,与有限标记的节点开发抗噪声GNN是重要的。但是,这是一个相当有限的工作。因此,我们研究了在具有有限标记节点的嘈杂图中开发鲁棒GNN的新问题。我们的分析表明,嘈杂的边缘和有限的标记节点都可能损害GNN的消息传递机制。为减轻这些问题,我们提出了一种新颖的框架,该框架采用嘈杂的边缘作为监督,以学习去噪和密集的图形,这可以减轻或消除嘈杂的边缘,并促进GNN的消息传递,以缓解有限标记节点的问题。生成的边缘还用于规则地将具有标记平滑度的未标记节点的预测规范化,以更好地列车GNN。实验结果对现实世界数据集展示了在具有有限标记节点的嘈杂图中提出框架的稳健性。
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Graph mining tasks arise from many different application domains, ranging from social networks, transportation to E-commerce, etc., which have been receiving great attention from the theoretical and algorithmic design communities in recent years, and there has been some pioneering work employing the research-rich Reinforcement Learning (RL) techniques to address graph data mining tasks. However, these graph mining methods and RL models are dispersed in different research areas, which makes it hard to compare them. In this survey, we provide a comprehensive overview of RL and graph mining methods and generalize these methods to Graph Reinforcement Learning (GRL) as a unified formulation. We further discuss the applications of GRL methods across various domains and summarize the method descriptions, open-source codes, and benchmark datasets of GRL methods. Furthermore, we propose important directions and challenges to be solved in the future. As far as we know, this is the latest work on a comprehensive survey of GRL, this work provides a global view and a learning resource for scholars. In addition, we create an online open-source for both interested scholars who want to enter this rapidly developing domain and experts who would like to compare GRL methods.
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近年来,异构图形神经网络(HGNNS)一直在开花,但每个工作所使用的独特数据处理和评估设置会让他们的进步完全了解。在这项工作中,我们通过使用其官方代码,数据集,设置和超参数来展示12个最近的HGNN的系统再现,揭示了关于HGNN的进展的令人惊讶的结果。我们发现,由于设置不当,简单的均匀GNN,例如GCN和GAT在很大程度上低估了。具有适当输入的GAT通常可以匹配或优于各种场景的所有现有HGNN。为了促进稳健和可重复的HGNN研究,我们构建异构图形基准(HGB),由具有三个任务的11个不同数据集组成。 HGB标准化异构图数据分割,特征处理和性能评估的过程。最后,我们介绍了一个简单但非常强大的基线简单 - HGN - 这显着优于HGB上以前的所有模型 - 以加速未来HGNN的进步。
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标记为图形结构数据的分类任务具有许多重要的应用程序,从社交建议到财务建模。深度神经网络越来越多地用于图形上的节点分类,其中具有相似特征的节点必须给出相同的标签。图形卷积网络(GCN)是如此广泛研究的神经网络体系结构,在此任务上表现良好。但是,对GCN的强大链接攻击攻击最近表明,即使对训练有素的模型进行黑框访问,培训图中也存在哪些链接(或边缘)。在本文中,我们提出了一种名为LPGNET的新神经网络体系结构,用于对具有隐私敏感边缘的图形进行培训。 LPGNET使用新颖的设计为训练过程中的图形结构提供了新颖的设计,为边缘提供了差异隐私(DP)保证。我们从经验上表明,LPGNET模型通常位于提供隐私和效用之间的最佳位置:它们比使用不使用边缘信息的“琐碎”私人体系结构(例如,香草MLP)和针对现有的链接策略攻击更好的弹性可以提供更好的实用性。使用完整边缘结构的香草GCN。 LPGNET还与DPGCN相比,LPGNET始终提供更好的隐私性权衡,这是我们大多数评估的数据集中将差异隐私改造为常规GCN的最新机制。
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Inferring missing links or detecting spurious ones based on observed graphs, known as link prediction, is a long-standing challenge in graph data analysis. With the recent advances in deep learning, graph neural networks have been used for link prediction and have achieved state-of-the-art performance. Nevertheless, existing methods developed for this purpose are typically discriminative, computing features of local subgraphs around two neighboring nodes and predicting potential links between them from the perspective of subgraph classification. In this formalism, the selection of enclosing subgraphs and heuristic structural features for subgraph classification significantly affects the performance of the methods. To overcome this limitation, this paper proposes a novel and radically different link prediction algorithm based on the network reconstruction theory, called GraphLP. Instead of sampling positive and negative links and heuristically computing the features of their enclosing subgraphs, GraphLP utilizes the feature learning ability of deep-learning models to automatically extract the structural patterns of graphs for link prediction under the assumption that real-world graphs are not locally isolated. Moreover, GraphLP explores high-order connectivity patterns to utilize the hierarchical organizational structures of graphs for link prediction. Our experimental results on all common benchmark datasets from different applications demonstrate that the proposed method consistently outperforms other state-of-the-art methods. Unlike the discriminative neural network models used for link prediction, GraphLP is generative, which provides a new paradigm for neural-network-based link prediction.
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图表可以模拟实体之间的复杂交互,它在许多重要的应用程序中自然出现。这些应用程序通常可以投入到标准图形学习任务中,其中关键步骤是学习低维图表示。图形神经网络(GNN)目前是嵌入方法中最受欢迎的模型。然而,邻域聚合范例中的标准GNN患有区分\ EMPH {高阶}图形结构的有限辨别力,而不是\ EMPH {低位}结构。为了捕获高阶结构,研究人员求助于主题和开发的基于主题的GNN。然而,现有的基于主基的GNN仍然仍然遭受较少的辨别力的高阶结构。为了克服上述局限性,我们提出了一个新颖的框架,以更好地捕获高阶结构的新框架,铰接于我们所提出的主题冗余最小化操作员和注射主题组合的新颖框架。首先,MGNN生成一组节点表示W.R.T.每个主题。下一阶段是我们在图案中提出的冗余最小化,该主题在彼此相互比较并蒸馏出每个主题的特征。最后,MGNN通过组合来自不同图案的多个表示来执行节点表示的更新。特别地,为了增强鉴别的功率,MGNN利用重新注射功能来组合表示的函数w.r.t.不同的主题。我们进一步表明,我们的拟议体系结构增加了GNN的表现力,具有理论分析。我们展示了MGNN在节点分类和图形分类任务上的七个公共基准上表现出最先进的方法。
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