本文已被:浏览 483次 下载 936次
Received:September 08, 2023 Revised:October 08, 2023
Received:September 08, 2023 Revised:October 08, 2023
中文摘要: 链路预测是通过已知的网络拓扑和节点属性挖掘未来时刻节点潜在关系的重要手段, 是预测缺失链路和识别虚假链路的有效方法, 在研究社会网络结构演化中具有现实意义. 传统的链路预测方法基于节点信息或路径信息相似性进行预测, 然而, 前者考虑指标单一导致预测精度受限, 后者由于计算复杂度过高不适合在规模较大网络中应用. 通过对网络拓扑结构的分析, 本文提出一种基于节点交互度(interacting degree of nodes, IDN)的社会网络链路预测方法. 该方法首先根据网络中节点间的路径特征, 引入了节点效率的概念, 从而提高对于没有公共邻居节点之间链路预测的准确性; 为了进一步挖掘节点间共同邻居的相关属性, 借助分析节点间共同邻居的拓扑结构, 该方法还创新性地整合了路径特征和局部信息, 提出了社会网络节点交互度的定义, 准确刻画出节点间的相似度, 从而增强网络链路的预测能力; 最后, 本文借助6个真实网络数据集对IDN方法进行验证, 实验结果表明, 相比于目前的主流算法, 本文提出的方法在AUC和Precision两个评价指标上均表现出更优的预测性能, 预测结果平均分别提升22%和54%. 因此节点交互度的提出在链路预测方面具有很高的可行性和有效性.
Abstract:Link prediction is an important means of mining potential relationships between nodes in the future through known network topology and node attributes, which is an effective method for predicting missing links and identifying false links and has practical significance in the study of social network structure evolution. Traditional link prediction methods are based on the similarity of node information or path information. However, the former considers a single index, resulting in limited prediction accuracy, and the latter is not suitable for application in large-scale networks due to excessive computational complexity. Through the analysis of network topology, this study proposes a social network link prediction method based on the interacting degree of nodes (IDN). The method first introduces the concept of node efficiency based on the path characteristics between nodes in the network, which improves the accuracy of link prediction between nodes without common neighbors. In order to further explore the relevant attributes of common neighbors between nodes, by analyzing the topology of common neighbors between nodes, the method also innovatively integrates the path characteristics and local information to propose the definition of the IDN in a social network, which accurately portrays the degree of similarity between nodes and thus enhances the prediction ability of network links. Finally, this study validates the IDN method with the help of six real network datasets, and the experimental results show that, compared with the current mainstream algorithms, the method proposed in this study shows better prediction performance in both AUC and Precision evaluation indexes, and the prediction results have been improved by an average of 22% and 54%, respectively. Therefore, the proposal of node interaction degree has high feasibility and effectiveness in link prediction.
keywords: link predication interacting degree of nodes (IDN) network topology similarity social network
文章编号: 中图分类号: 文献标志码:
基金项目:国家自然科学基金NSFC海峡联合基金(U1905211); 福建省科技项目(2022G02003, 2021L3032); 福建省教育厅中青年项目(JAT220814)
引用文本:
徐瑞阳,徐振宇,李家印,许力.基于节点交互度的社会网络链路预测.计算机系统应用,2024,33(3):43-51
XU Rui-Yang,XU Zhen-Yu,LI Jia-Yin,XU Li.Link Prediction for Social Networks Based on Interacting Degree of Nodes.COMPUTER SYSTEMS APPLICATIONS,2024,33(3):43-51
徐瑞阳,徐振宇,李家印,许力.基于节点交互度的社会网络链路预测.计算机系统应用,2024,33(3):43-51
XU Rui-Yang,XU Zhen-Yu,LI Jia-Yin,XU Li.Link Prediction for Social Networks Based on Interacting Degree of Nodes.COMPUTER SYSTEMS APPLICATIONS,2024,33(3):43-51