In the last few years, graphs have become an instinctive representative tool to better study complex structures. For example, in chemistry, it is common to represent and study the interaction between different proteins as a graph, reducing the experimental costs. Similarly, with the consolidation of Web 2.0 and the rise of Web 3.0, social networks have become one of the most popular sources of information, wherein users not only utilize but also provide content. On such platforms, the users’ information is explicitly provided and most of the information is implicitly contained in the links between different users. In robotics, it is possible to achieve more a “human-like” movement of an artificial skeleton if we represent the interaction o...
Community detection is a fundamental and widely-studied problem that finds all densely-connected gro...
We present Deep MinCut (DMC), an unsupervised approach to learn node embeddings for graph -structure...
Thesis (Ph.D.) - Indiana University, Luddy School of Informatics, Computing, and Engineering/Univers...
In the last few years, graphs have become an instinctive representative tool to better study complex...
Graph embedding is a transformation of nodes of a graph into a set of vectors. A good embedding shou...
Networks are useful when modeling interactions in real-world systems based on relational data. Since...
INST: L_200The purpose of this dissertation is to provide insights into the study of node embeddings...
Graph embedding techniques, which learn low-dimensional representations of a graph, are achieving st...
Graphs are natural representations of problems and data in many fields. For example, in computationa...
Communities, also called clusters or modules, are groups of nodes which probably share common proper...
Graph Representation Learning aims to embed nodes in a low-dimensional space. In this thesis, we tac...
Graph Representation Learning aims to embed nodes in a low-dimensional space. In this thesis, we tac...
Graph Representation Learning aims to embed nodes in a low-dimensional space. In this thesis, we tac...
Graph Representation Learning aims to embed nodes in a low-dimensional space. In this thesis, we tac...
Graph Representation Learning aims to embed nodes in a low-dimensional space. In this thesis, we tac...
Community detection is a fundamental and widely-studied problem that finds all densely-connected gro...
We present Deep MinCut (DMC), an unsupervised approach to learn node embeddings for graph -structure...
Thesis (Ph.D.) - Indiana University, Luddy School of Informatics, Computing, and Engineering/Univers...
In the last few years, graphs have become an instinctive representative tool to better study complex...
Graph embedding is a transformation of nodes of a graph into a set of vectors. A good embedding shou...
Networks are useful when modeling interactions in real-world systems based on relational data. Since...
INST: L_200The purpose of this dissertation is to provide insights into the study of node embeddings...
Graph embedding techniques, which learn low-dimensional representations of a graph, are achieving st...
Graphs are natural representations of problems and data in many fields. For example, in computationa...
Communities, also called clusters or modules, are groups of nodes which probably share common proper...
Graph Representation Learning aims to embed nodes in a low-dimensional space. In this thesis, we tac...
Graph Representation Learning aims to embed nodes in a low-dimensional space. In this thesis, we tac...
Graph Representation Learning aims to embed nodes in a low-dimensional space. In this thesis, we tac...
Graph Representation Learning aims to embed nodes in a low-dimensional space. In this thesis, we tac...
Graph Representation Learning aims to embed nodes in a low-dimensional space. In this thesis, we tac...
Community detection is a fundamental and widely-studied problem that finds all densely-connected gro...
We present Deep MinCut (DMC), an unsupervised approach to learn node embeddings for graph -structure...
Thesis (Ph.D.) - Indiana University, Luddy School of Informatics, Computing, and Engineering/Univers...