The graph embedding paradigm projects nodes of a graph into a vector space, which can facilitate various downstream graph analysis tasks such as node classification and clustering. To efficiently learn node embeddings from a graph, graph embedding techniques usually preserve the proximity between node pairs sampled from the graph using random walks. In the context of a heterogeneous graph, which contains nodes from different domains, classical random walks are biased towards highly visible domains where nodes are associated with a dominant number of paths. To overcome this bias, existing heterogeneous graph embedding techniques typically rely on meta-paths (i.e., fixed sequences of node types) to guide random walks. However, using ...
Meta paths are good mechanisms to improve the quality of graph analysis on heterogeneous information...
Heterogeneous graph learning has drawn significant attentions in recent years, due to the success of...
In real world, most of the information networks are heterogeneous in nature, which contains differen...
© 2018, Springer International Publishing AG, part of Springer Nature. Network embedding in heteroge...
Heterogeneous graph neural networks (GNNs) have been successful in handling heterogeneous graphs. In...
Heterogeneous Information Network (HIN) embedding has been a prevalent approach to learn representat...
A heterogeneous graph consists of different vertices and edges types. Learning on heterogeneous grap...
Heterogeneous graphs are ubiquitous data structures that can inherently capture multi-type and multi...
We introduce a set of algorithms (Het-node2vec) that extend the original node2vec node-neighborhood ...
Along with the growth of graph neural networks (GNNs), many researchers have adopted metapath-based ...
Networks found in the real-world are numerous and varied. A common type of network is the heterogene...
Current Heterogeneous Network Embedding (HNE) models can be roughly divided into two types, i.e., re...
There is a variety of available approaches to learn graph node embeddings. One of their common under...
Heterogeneous graphs generally refers to graphs with different types of nodes and edges. A common ap...
Graph embedding, representing local and global neighborhood information by numerical vectors, is a c...
Meta paths are good mechanisms to improve the quality of graph analysis on heterogeneous information...
Heterogeneous graph learning has drawn significant attentions in recent years, due to the success of...
In real world, most of the information networks are heterogeneous in nature, which contains differen...
© 2018, Springer International Publishing AG, part of Springer Nature. Network embedding in heteroge...
Heterogeneous graph neural networks (GNNs) have been successful in handling heterogeneous graphs. In...
Heterogeneous Information Network (HIN) embedding has been a prevalent approach to learn representat...
A heterogeneous graph consists of different vertices and edges types. Learning on heterogeneous grap...
Heterogeneous graphs are ubiquitous data structures that can inherently capture multi-type and multi...
We introduce a set of algorithms (Het-node2vec) that extend the original node2vec node-neighborhood ...
Along with the growth of graph neural networks (GNNs), many researchers have adopted metapath-based ...
Networks found in the real-world are numerous and varied. A common type of network is the heterogene...
Current Heterogeneous Network Embedding (HNE) models can be roughly divided into two types, i.e., re...
There is a variety of available approaches to learn graph node embeddings. One of their common under...
Heterogeneous graphs generally refers to graphs with different types of nodes and edges. A common ap...
Graph embedding, representing local and global neighborhood information by numerical vectors, is a c...
Meta paths are good mechanisms to improve the quality of graph analysis on heterogeneous information...
Heterogeneous graph learning has drawn significant attentions in recent years, due to the success of...
In real world, most of the information networks are heterogeneous in nature, which contains differen...