Graph Representation Learning (GRL) has become central for characterizing structures of complex networks and performing tasks such as link prediction, node classification, network reconstruction, and community detection. Whereas numerous generative GRL models have been proposed, many approaches have prohibitive computational requirements hampering large-scale network analysis, fewer are able to explicitly account for structure emerging at multiple scales, and only a few explicitly respect important network properties such as homophily and transitivity. This paper proposes a novel scalable graph representation learning method named the Hierarchical Block Distance Model (HBDM). The HBDM imposes a multiscale block structure akin to stochastic ...
Deep neural networks implement a sequence of layer-by-layer operations that are each relatively easy...
Abstract. Link prediction is a link mining task that tries to find new edges within a given graph. A...
Graphs are the natural framework of many of today’s highest impact computing applications: from onli...
Many real-world networks are described by both connectivity information and features for every node....
We present HARP, a novel method for learning low dimensional embeddings of a graph’s nodes which pre...
In recent years, graph neural networks (GNNs) have emerged as a promising tool for solving machine l...
A persistent worry with computational models of unsupervised learning is that learning will become m...
It is known that many networks modeling real-life complex systems are small-word (large local cluste...
Link prediction is a link mining task that tries to find new edges within a given graph. Among the t...
Research on graph representation learning (GRL) has made major strides over the past decade, with wi...
Subgraph-based graph representation learning (SGRL) has been recently proposed to deal with some fun...
© 2019 IEEE. Graph decomposition has been widely used to analyze real-life networks from different p...
Two common features of many large real networks are that they are sparse and that they have strong c...
In this thesis, we explore applications of spectral graph theory to the analysis of complex datasets...
A central aim of modeling complex networks is to accurately embed networks in order to detect struct...
Deep neural networks implement a sequence of layer-by-layer operations that are each relatively easy...
Abstract. Link prediction is a link mining task that tries to find new edges within a given graph. A...
Graphs are the natural framework of many of today’s highest impact computing applications: from onli...
Many real-world networks are described by both connectivity information and features for every node....
We present HARP, a novel method for learning low dimensional embeddings of a graph’s nodes which pre...
In recent years, graph neural networks (GNNs) have emerged as a promising tool for solving machine l...
A persistent worry with computational models of unsupervised learning is that learning will become m...
It is known that many networks modeling real-life complex systems are small-word (large local cluste...
Link prediction is a link mining task that tries to find new edges within a given graph. Among the t...
Research on graph representation learning (GRL) has made major strides over the past decade, with wi...
Subgraph-based graph representation learning (SGRL) has been recently proposed to deal with some fun...
© 2019 IEEE. Graph decomposition has been widely used to analyze real-life networks from different p...
Two common features of many large real networks are that they are sparse and that they have strong c...
In this thesis, we explore applications of spectral graph theory to the analysis of complex datasets...
A central aim of modeling complex networks is to accurately embed networks in order to detect struct...
Deep neural networks implement a sequence of layer-by-layer operations that are each relatively easy...
Abstract. Link prediction is a link mining task that tries to find new edges within a given graph. A...
Graphs are the natural framework of many of today’s highest impact computing applications: from onli...