The collection of nodes is termed as community in any network system that are tightly associated to the other nodes. In network investigation, identifying the community structure is crucial task, particularly for exposing connections between certain nodes. For community overlapping, network discovery, there are numerous methodologies described in the literature. Numerous scholars have recently focused on network embedding and feature learning techniques for node clustering. These techniques translate the network into a representation space with fewer dimensions. In this paper, a deep neural network-based model for learning graph representation and stacked auto-encoders are given a nonlinear embedding of the original graph to learn the model...
Detecting community structure is an important methodology to study complex networks. Community detec...
Community detection is one of the most important research area wherein invention and growthof social...
Massive social networks have become increasingly popular in recent years. Community detection is one...
Community detection in a social network is an emerging issue in the study of network system as it he...
Overlapping community detection is a key problem in graph mining. Some research has considered apply...
Community detection is an important topic for social network analysis and is also essential to under...
Many real-world systems are known as complex networks that can be modeled by networks of interacting...
Social networking sites are important to connect with the world virtually. As the number of users ac...
Abstract—One of the main organizing principles in real-world networks is that of network communities...
AbstractIn the field of research, Social Network Analysis is prevalent domain which pulls the attent...
summary:Community detection algorithms help us improve the management of complex networks and provid...
Presented at the 2010 International Conference on Advances in Social Networks Analysis and Mining (A...
Network communities represent basic structures for understanding the organization of real-world netw...
Finding decompositions of a graph into a family of clusters is crucial to understanding its underlyi...
Abstract. There is a surge of community detection on complex network analysis in recent years, since...
Detecting community structure is an important methodology to study complex networks. Community detec...
Community detection is one of the most important research area wherein invention and growthof social...
Massive social networks have become increasingly popular in recent years. Community detection is one...
Community detection in a social network is an emerging issue in the study of network system as it he...
Overlapping community detection is a key problem in graph mining. Some research has considered apply...
Community detection is an important topic for social network analysis and is also essential to under...
Many real-world systems are known as complex networks that can be modeled by networks of interacting...
Social networking sites are important to connect with the world virtually. As the number of users ac...
Abstract—One of the main organizing principles in real-world networks is that of network communities...
AbstractIn the field of research, Social Network Analysis is prevalent domain which pulls the attent...
summary:Community detection algorithms help us improve the management of complex networks and provid...
Presented at the 2010 International Conference on Advances in Social Networks Analysis and Mining (A...
Network communities represent basic structures for understanding the organization of real-world netw...
Finding decompositions of a graph into a family of clusters is crucial to understanding its underlyi...
Abstract. There is a surge of community detection on complex network analysis in recent years, since...
Detecting community structure is an important methodology to study complex networks. Community detec...
Community detection is one of the most important research area wherein invention and growthof social...
Massive social networks have become increasingly popular in recent years. Community detection is one...