Graph-based Semi-Supervised Learning (SSL) aims to transfer the labels of a handful of labeled data to the remaining massive unlabeled data via a graph. As one of the most popular graph-based SSL approaches, the recently proposed Graph Convolutional Networks (GCNs) have gained remarkable progress by combining the sound expressiveness of neural networks with graph structure. Nevertheless, the existing graph-based methods do not directly address the core problem of SSL, i.e., the shortage of supervision, and thus their performances are still very limited. To accommodate this issue, a novel GCN-based SSL algorithm is presented in this paper to enrich the supervision signals by utilizing both data similarities and graph structure. Firstly, by designing a semi-supervised contrastive loss, improved node representations can be generated via maximizing the agreement between different views of the same data or the data from the same class. Therefore, the rich unlabeled data and the scarce yet valuable labeled data can jointly provide abundant supervision information for learning discriminative node representations, which helps improve the subsequent classification result. Secondly, the underlying determinative relationship between the data features and input graph topology is extracted as supplementary supervision signals for SSL via using a graph generative loss related to the input features. Intensive experimental results on a variety of real-world datasets firmly verify the effectiveness of our algorithm compared with other state-of-the-art methods.
翻译:以图表为基础的半缩图学习(SSL)旨在将少数贴标签数据标签的标签通过图解转移到剩余的大量未贴标签的数据中。作为最受欢迎的基于图表的 SSL 方法之一,最近提议的图表进化网络(GCNs)通过将神经网络的清晰表达性与图形结构相结合取得了显著进展。然而,现有的基于图表的方法并没有直接解决SSL的核心问题,即监督不足,因此其性能仍然非常有限。为了适应这一问题,本文中提出了一个新的基于 GCN 的基于 GCN 的SSL 算法,以利用数据相似性和图形结构来丰富监督信号。首先,通过设计一个半超强对比性对比性损失的图像网络(GCNs),可以通过最大限度地将同一数据的不同观点或同一类数据之间的一致来产生改进的无表示。因此,丰富的未贴标签数据和稀缺但有价值的标签数据可以共同提供丰富的监督信息,用于学习歧视性的节态表,这有助于改进随后的分类结果。第二,通过模型模型模型模型模型的模型模型模型模型模型模型,通过数据模型的精确性分析结果,对数据进行精确的对比。