Yuxin Guo;Deyu Bo;Cheng Yang;Zhiyuan Lu;Zhongjian Zhang;Jixi Liu;Yufei Peng;Chuan Shi
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引用次数: 0
Abstract
The history of artificial intelligence (AI) has witnessed the significant impact of high-quality data on various deep learning models, such as ImageNet for AlexNet and ResNet. Recently, instead of designing more complex neural architectures as model-centric approaches, the attention of AI community has shifted to data-centric ones, which focuses on better processing data to strengthen the ability of neural models. Graph learning, which operates on ubiquitous topological data, also plays an important role in the era of deep learning. In this survey, we comprehensively review graph learning approaches from the data-centric perspective, and aim to answer three crucial questions: (1) when to modify graph data, (2) what part of the graph data needs modification to unlock the potential of various graph models, and (3) how to safeguard graph models from problematic data influence. Accordingly, we propose a novel taxonomy based on the stages in the graph learning pipeline, and highlight the processing methods for different data structures in the graph data, i.e., topology, feature and label. Furthermore, we analyze some potential problems embedded in graph data and discuss how to solve them in a data-centric manner. Finally, we provide some promising future directions for data-centric graph learning.
人工智能(AI)的历史见证了高质量数据对各种深度学习模型(如ImageNet for AlexNet和ResNet)的重大影响。最近,人工智能界的注意力从设计更复杂的神经架构作为以模型为中心的方法,转向以数据为中心的方法,即更好地处理数据以增强神经模型的能力。在本调查中,我们从数据中心的角度全面回顾了图学习方法,并旨在回答三个关键问题:(1)何时修改图数据,(2)需要修改图数据的哪一部分以释放各种图模型的潜力,以及(3)如何保护图模型免受问题数据的影响。因此,我们提出了一种基于图学习管道阶段的新分类方法,并重点介绍了图数据中不同数据结构(拓扑、特征和标签)的处理方法。此外,我们还分析了图数据中的一些潜在问题,并讨论了如何以数据为中心的方式解决这些问题。最后,我们为以数据为中心的图学习提供了一些有希望的未来方向。
期刊介绍:
The IEEE Transactions on Big Data publishes peer-reviewed articles focusing on big data. These articles present innovative research ideas and application results across disciplines, including novel theories, algorithms, and applications. Research areas cover a wide range, such as big data analytics, visualization, curation, management, semantics, infrastructure, standards, performance analysis, intelligence extraction, scientific discovery, security, privacy, and legal issues specific to big data. The journal also prioritizes applications of big data in fields generating massive datasets.