论文标题
图形神经网络符合神经符号计算:调查和观点
Graph Neural Networks Meet Neural-Symbolic Computing: A Survey and Perspective
论文作者
论文摘要
神经符号计算现已成为学术和行业研究实验室的兴趣主题。图形神经网络(GNN)已被广泛用于关系和符号域,并在组合优化,约束满意度,关系推理和其他科学领域中广泛应用。正如神经符号计算所暗示的那样,对一般要求有原则方法的AI系统的解释性,可解释性和信任的需求。在本文中,我们回顾了使用GNN作为神经符号计算模型的最新技术。这包括GNN在几个领域的应用,以及它与神经符号计算中当前发展的关系。
Neural-symbolic computing has now become the subject of interest of both academic and industry research laboratories. Graph Neural Networks (GNN) have been widely used in relational and symbolic domains, with widespread application of GNNs in combinatorial optimization, constraint satisfaction, relational reasoning and other scientific domains. The need for improved explainability, interpretability and trust of AI systems in general demands principled methodologies, as suggested by neural-symbolic computing. In this paper, we review the state-of-the-art on the use of GNNs as a model of neural-symbolic computing. This includes the application of GNNs in several domains as well as its relationship to current developments in neural-symbolic computing.