Online social network platforms such as Twitter and Sina Weibo have been extremely popular over the past 20 years. Identifying the network community of a social platform is essential to exploring and understanding the users' interests. However, the rapid development of science and technology has generated large amounts of social network data, creating great computational challenges for community detection in large-scale social networks. Here, we propose a novel subsampling spectral clustering algorithm to identify community structures in large-scale social networks with limited computing resources. More precisely, spectral clustering is conducted using only the information of a small subsample of the network nodes, resulting in a huge reduc...
The community-based structure of communication on social networking sites has long been a focus of s...
This dissertation has its main focus on the development of social network community detection algori...
Twitter has evolved into a source of social, political and real time information in addition to bein...
Social networks are ubiquitous. One of the main organizing principles in these real world networks i...
Abstract Spectral clustering, while perhaps the most efficient heuristics for graph partitioning, ha...
With the help of information technologies, we have access to very large networks, even with billions...
An important aspect of community analysis is not only determining the communities within the network...
Community detection has become an increasingly popular tool for analyzing and researching complex ne...
We develop an algorithm to detect community structure in complex networks. The algorithm is based on...
We develop an algorithm to detect community structure in complex networks. The algorithm is based on...
Clustering of social networks, known as community detection is a fundamental partof social network a...
Traditional spectral clustering methods cannot naturally learn the number of communities in a networ...
AbstractThis study mainly focuses on the methodology of weighted graph clustering with the purpose o...
Spectral clustering is a modern data clustering methodology with many notable advantages. However, t...
'Sociolects' are specialized vocabularies used by social subgroups defined by common interests or or...
The community-based structure of communication on social networking sites has long been a focus of s...
This dissertation has its main focus on the development of social network community detection algori...
Twitter has evolved into a source of social, political and real time information in addition to bein...
Social networks are ubiquitous. One of the main organizing principles in these real world networks i...
Abstract Spectral clustering, while perhaps the most efficient heuristics for graph partitioning, ha...
With the help of information technologies, we have access to very large networks, even with billions...
An important aspect of community analysis is not only determining the communities within the network...
Community detection has become an increasingly popular tool for analyzing and researching complex ne...
We develop an algorithm to detect community structure in complex networks. The algorithm is based on...
We develop an algorithm to detect community structure in complex networks. The algorithm is based on...
Clustering of social networks, known as community detection is a fundamental partof social network a...
Traditional spectral clustering methods cannot naturally learn the number of communities in a networ...
AbstractThis study mainly focuses on the methodology of weighted graph clustering with the purpose o...
Spectral clustering is a modern data clustering methodology with many notable advantages. However, t...
'Sociolects' are specialized vocabularies used by social subgroups defined by common interests or or...
The community-based structure of communication on social networking sites has long been a focus of s...
This dissertation has its main focus on the development of social network community detection algori...
Twitter has evolved into a source of social, political and real time information in addition to bein...