Liu Shihu, Gao Haiyan
School of Mathematics and Computer Science, Yunnan Minzu University, Kunming 650504, China.
Entropy (Basel). 2023 Jun 15;25(6):941. doi: 10.3390/e25060941.
Due to its wide application across many disciplines, how to make an efficient ranking for nodes in graph data has become an urgent topic. It is well-known that most classical methods only consider the local structure information of nodes, but ignore the global structure information of graph data. In order to further explore the influence of structure information on node importance, this paper designs a structure entropy-based node importance ranking method. Firstly, the target node and its associated edges are removed from the initial graph data. Next, the structure entropy of graph data can be constructed by considering the local and global structure information at the same time, in which case all nodes can be ranked. The effectiveness of the proposed method was tested by comparing it with five benchmark methods. The experimental results show that the structure entropy-based node importance ranking method performs well on eight real-world datasets.
由于其在许多学科中的广泛应用,如何对图数据中的节点进行高效排序已成为一个紧迫的课题。众所周知,大多数经典方法只考虑节点的局部结构信息,而忽略了图数据的全局结构信息。为了进一步探究结构信息对节点重要性的影响,本文设计了一种基于结构熵的节点重要性排序方法。首先,从初始图数据中移除目标节点及其关联边。接下来,通过同时考虑局部和全局结构信息来构建图数据的结构熵,在这种情况下可以对所有节点进行排序。通过与五种基准方法进行比较,测试了所提方法的有效性。实验结果表明,基于结构熵的节点重要性排序方法在八个真实世界数据集上表现良好。