I. Introduction
Graphs excel at capturing complex relationships between entities and providing a flexible and intuitive representation of them. Such strengths make graphs well-suited for implementation in biomedical [1]–[3], recommendation [4]–[6], and finance [7]–[9]. Recently, Graph Neural Networks (GNNs) have emerged as powerful tools for graph-based data engineering. Through learning from graphs, GNNs achieve great success in various downstream tasks, including node-level [10]–[12], edge-level [13]–[15], and graph-level [16]–[18].