A central aim of modeling complex networks is to accurately embed networks in order to detect structures and predict link and node properties. The latent space models (LSM) have become prominent frameworks for embedding networks and include the latent distance (LDM) and eigenmodel (LEM) as the most widely used LSM specifications. For latent community detection, the embedding space in LDMs has been endowed with a clustering model whereas LEMs have been constrained to part-based non-negative matrix factorization (NMF) inspired representations promoting community discovery. We presently reconcile LSMs with latent community detection by constraining the LDM representation to the D-simplex forming the hybrid-membership latent distance model (HM-...
Community discovery can discover the community structure in a network, and it provides consumers wit...
Presented on September 4, 2019 at 12:15 p.m. in the Marcus Nanotechnology Building, Room 1116.Galen ...
Abstract Many physical and social systems are best described by networks. And the str...
Graph Representation Learning (GRL) has become central for characterizing structures of complex netw...
Network embedding aims to learn the low-dimensional representations of nodes in networks. It preserv...
Recent research on community detection focuses on learning representations of nodes using different ...
Online social networks like Twitter and Facebook are among the most popular sites on the Internet. M...
Network embedding, aiming to learn the low-dimensional representations of nodes in networks, is of p...
Two common features of many large real networks are that they are sparse and that they have strong c...
Network embedding, aiming to learn the low-dimensional representations of nodes in networks, is of p...
Abstract. Community detection consists in searching cohesive subgroups of nodes in complex networks....
Uncovering latent community structure in complex networks is a field that has received an enormous a...
Community detection is a key technique for identifying the intrinsic community structures of complex...
Network data, commonly used throughout the physical, social, and biological sciences, consist of nod...
Spectral embedding of adjacency or Laplacian matrices of undirected graphs is a common technique for...
Community discovery can discover the community structure in a network, and it provides consumers wit...
Presented on September 4, 2019 at 12:15 p.m. in the Marcus Nanotechnology Building, Room 1116.Galen ...
Abstract Many physical and social systems are best described by networks. And the str...
Graph Representation Learning (GRL) has become central for characterizing structures of complex netw...
Network embedding aims to learn the low-dimensional representations of nodes in networks. It preserv...
Recent research on community detection focuses on learning representations of nodes using different ...
Online social networks like Twitter and Facebook are among the most popular sites on the Internet. M...
Network embedding, aiming to learn the low-dimensional representations of nodes in networks, is of p...
Two common features of many large real networks are that they are sparse and that they have strong c...
Network embedding, aiming to learn the low-dimensional representations of nodes in networks, is of p...
Abstract. Community detection consists in searching cohesive subgroups of nodes in complex networks....
Uncovering latent community structure in complex networks is a field that has received an enormous a...
Community detection is a key technique for identifying the intrinsic community structures of complex...
Network data, commonly used throughout the physical, social, and biological sciences, consist of nod...
Spectral embedding of adjacency or Laplacian matrices of undirected graphs is a common technique for...
Community discovery can discover the community structure in a network, and it provides consumers wit...
Presented on September 4, 2019 at 12:15 p.m. in the Marcus Nanotechnology Building, Room 1116.Galen ...
Abstract Many physical and social systems are best described by networks. And the str...