计算机科学
复杂网络
相似性(几何)
数据挖掘
钥匙(锁)
图形
余弦相似度
人工智能
功率图分析
特征(语言学)
机器学习
理论计算机科学
模式识别(心理学)
图像(数学)
语言学
万维网
哲学
计算机安全
作者
Haji Gul,Feras Al‐Obeidat,Adnan Amin,Fernando Moreira
摘要
Summary This paper discusses the importance of feature extraction and structure similarity measurement in the analysis of complex networks. Social networks, biological systems, and transportation networks are just a few examples of the many phenomena that have been modeled using complex networks. However, analyzing these networks can be challenging due to their large size and complexity. Feature extraction techniques can help to simplify the network by identifying key nodes or substructures. Structure similarity measurement techniques can be used to compare different networks and identify similarities and differences between them. Previous research has suggested that real‐world complex networks are influenced by multiplex features and either local or global features. However, the interaction between these characteristics is not well understood. The proposed approach outperforms other graph similarity methods on publicly available datasets, with accurate estimations of overall complex network structures. Specifically, the approach based on cosine similarity outperforms as compared to existing methods. Overall, this study highlights the importance of considering various graph features–local and global features and their interactions in the analysis of complex networks.
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