© 2017, © Emerald Publishing Limited. Purpose: This study aims to review the literature on graph-theoretic mining methods for node importance in both static and dynamic world city networks, which is correspondingly categorised by graph-theoretic node importance mining on network topologies and transmission mechanisms. Design/methodology/approach: The authors overview the graph-theoretic indicators of node importance: centrality and power. Then, the methods of graph-theoretic node importance mining on network topologies are assessed with node relevance, centrality- and power-based measurements, heterogeneous fusion and other miscellaneous approaches. The latest progress in transmission mechanisms is also reviewed in this study involving netw...
Importance of nodes and tie strength are necessary elements to characterize and analyze networks, a...
The identification of node importance in complex networks is of theoretical and practical significan...
To measure node importance, network scientists employ centrality scores that typically take a micros...
The stability and robustness of a complex network can be significantly improved by determining impor...
Relatively important node mining has always been an essential research topic in complex networks. Ex...
BACKGROUND: Many complex systems can be represented as networks, and how a network breaks up into su...
Many complex systems can be represented as networks, and how a network breaks up into subnetworks or...
Crucial nodes in a network refer to those nodes that their existence is so important in preserving t...
AbstractEvaluating the importance of nodes for complex networks is of great significance to the rese...
The heterogeneous nature of a complex network determines the roles of each node in the network that ...
Evaluating the importance of nodes for complex networks is an important part of invulnerability rese...
In recent years, the identification of the essential nodes in complex networks has attracted signifi...
Over the last few years, the problem of determining the most important nodes in a graph has gained a...
Identifying node importance in complex networks is of great significance to improve the network dama...
The problem of node importance in a general controlled complex network is investigated in this brief...
Importance of nodes and tie strength are necessary elements to characterize and analyze networks, a...
The identification of node importance in complex networks is of theoretical and practical significan...
To measure node importance, network scientists employ centrality scores that typically take a micros...
The stability and robustness of a complex network can be significantly improved by determining impor...
Relatively important node mining has always been an essential research topic in complex networks. Ex...
BACKGROUND: Many complex systems can be represented as networks, and how a network breaks up into su...
Many complex systems can be represented as networks, and how a network breaks up into subnetworks or...
Crucial nodes in a network refer to those nodes that their existence is so important in preserving t...
AbstractEvaluating the importance of nodes for complex networks is of great significance to the rese...
The heterogeneous nature of a complex network determines the roles of each node in the network that ...
Evaluating the importance of nodes for complex networks is an important part of invulnerability rese...
In recent years, the identification of the essential nodes in complex networks has attracted signifi...
Over the last few years, the problem of determining the most important nodes in a graph has gained a...
Identifying node importance in complex networks is of great significance to improve the network dama...
The problem of node importance in a general controlled complex network is investigated in this brief...
Importance of nodes and tie strength are necessary elements to characterize and analyze networks, a...
The identification of node importance in complex networks is of theoretical and practical significan...
To measure node importance, network scientists employ centrality scores that typically take a micros...