Graphs can be found in almost every part of modern life: social networks, road networks, biology, and so on. Finding the most important node is a vital issue. Up to this date, numerous centrality measures were proposed to address this problem; however, each has its drawbacks, for example, not scaling well on large graphs. In this paper, we investigate the ranking efficiency and the execution time of a method that uses graph clustering to reduce the time that is needed to define the vital nodes. With graph clustering, the neighboring nodes representing communities are selected into groups. These groups are then used to create subgraphs from the original graph, which are smaller and easier to measure. To classify the efficiency, we investigat...
Centrality is widely used to measure which nodes are important in a network. In recent decades, nume...
(Previously submitted to ICDM on June 18, 2012) Who is more important in a network? Who controls the...
In network analysis, it is useful to identify important vertices in a network. Based on the varying ...
Within graph theory and network analysis, centrality of a vertex measures the relative importance of...
permits unrestricted use, distribution, and reproduction in any medium, provided the original work i...
The structure of many complex networks includes edge directionality and weights on top of their topo...
The centrality of an edge in a graph is proposed to be the degree of sensitivity of a graph distance...
Centrality measures on networks can provide vital information such as the location of hubs in the ne...
The article of record as published may be found at http://dx.doi.org/10.1145/3110025.3110064Closenes...
In this thesis we investigate two topics in data mining on graphs; in the first part we investigate...
Evaluating influential nodes is one of the fundamental problems in large scale networks having wide ...
Abstract—Estimating influential nodes in large scale networks including but not limited to social ne...
Over the past decade, there has been extensive research conducted on complex networks, primarily dri...
Many scholars have tried to address the identification of critical nodes in complex networks from di...
Abstract Nowadays a large amount of data is originated by complex systems, such as social networks, ...
Centrality is widely used to measure which nodes are important in a network. In recent decades, nume...
(Previously submitted to ICDM on June 18, 2012) Who is more important in a network? Who controls the...
In network analysis, it is useful to identify important vertices in a network. Based on the varying ...
Within graph theory and network analysis, centrality of a vertex measures the relative importance of...
permits unrestricted use, distribution, and reproduction in any medium, provided the original work i...
The structure of many complex networks includes edge directionality and weights on top of their topo...
The centrality of an edge in a graph is proposed to be the degree of sensitivity of a graph distance...
Centrality measures on networks can provide vital information such as the location of hubs in the ne...
The article of record as published may be found at http://dx.doi.org/10.1145/3110025.3110064Closenes...
In this thesis we investigate two topics in data mining on graphs; in the first part we investigate...
Evaluating influential nodes is one of the fundamental problems in large scale networks having wide ...
Abstract—Estimating influential nodes in large scale networks including but not limited to social ne...
Over the past decade, there has been extensive research conducted on complex networks, primarily dri...
Many scholars have tried to address the identification of critical nodes in complex networks from di...
Abstract Nowadays a large amount of data is originated by complex systems, such as social networks, ...
Centrality is widely used to measure which nodes are important in a network. In recent decades, nume...
(Previously submitted to ICDM on June 18, 2012) Who is more important in a network? Who controls the...
In network analysis, it is useful to identify important vertices in a network. Based on the varying ...