论文标题
图形神经网络的实用教程
A Practical Tutorial on Graph Neural Networks
论文作者
论文摘要
图形神经网络(GNN)最近在人工智能(AI)领域的流行度增长,因为它们独特地摄取了相对非结构化的数据类型作为输入数据。尽管GNN体系结构的某些要素在概念上与传统的神经网络(和神经网络变体)相似,但其他元素代表了与传统深度学习技术的背离。该教程通过整理和介绍有关GNN最常见和性能变体的动机,概念,数学和应用的详细信息,从而使GNNS的力量和新颖性揭示了AI从业者。重要的是,我们简洁地介绍了本教程,并提供了实际的示例,从而提供了有关GNNS主题的实用且易于访问的教程。
Graph neural networks (GNNs) have recently grown in popularity in the field of artificial intelligence (AI) due to their unique ability to ingest relatively unstructured data types as input data. Although some elements of the GNN architecture are conceptually similar in operation to traditional neural networks (and neural network variants), other elements represent a departure from traditional deep learning techniques. This tutorial exposes the power and novelty of GNNs to AI practitioners by collating and presenting details regarding the motivations, concepts, mathematics, and applications of the most common and performant variants of GNNs. Importantly, we present this tutorial concisely, alongside practical examples, thus providing a practical and accessible tutorial on the topic of GNNs.