Many real-world networks have a rich collection of objects. The semantics of these objects allows us to capture different classes of proximities, thus enabling an important task of semantic proximity search. As the core of semantic proximity search, we have to measure the proximity on a heterogeneous graph, whose nodes are various types of objects. Most of the existing methods rely on engineering features about the graph structure between two nodes to measure their proximity. With recent development on graph embedding, we see a good chance to avoid feature engineering for semantic proximity search. There is very little work on using graph embedding for semantic proximity search. We also observe that graph embedding methods typically focus o...
The objective of this article is to bridge the gap between two important research directions: (1) ne...
Graph Embedding methods are aimed at mapping each vertex into a low dimensional vector space, which ...
Relating, connecting and navigating between concepts represent a major challenge for machine intelli...
Proximity search on heterogeneous graphs aims to measure the proximity between two nodes on a graph ...
This tool aims to perform semantic proximity search between nodes on the graph based on anchored met...
There is a variety of available approaches to learn graph node embeddings. One of their common under...
An information retrieval (IR) engine can rank documents based on textual proximityofkeywords within ...
An information retrieval (IR) engine can rank documents based on textual proximity of keywords withi...
International audienceIn large-scale online complex networks (Wikipedia, Facebook, Twitter, etc.) fi...
Spatial data mining recently emerges from a number of real applications, such as real-estate marketi...
Spatial data mining recently emerges from a number of real applications, such as real-estate marketi...
We introduce a new probabilistic proximity search algorithm for range and K-nearest neighbor (K-NN) ...
Path search between concepts over a semantic network is an issue of great interest for many applicat...
Abstract — The explosive growth of social networks has created numerous exciting research opportunit...
Mining graph patterns in large networks is critical to a vari-ety of applications such as malware de...
The objective of this article is to bridge the gap between two important research directions: (1) ne...
Graph Embedding methods are aimed at mapping each vertex into a low dimensional vector space, which ...
Relating, connecting and navigating between concepts represent a major challenge for machine intelli...
Proximity search on heterogeneous graphs aims to measure the proximity between two nodes on a graph ...
This tool aims to perform semantic proximity search between nodes on the graph based on anchored met...
There is a variety of available approaches to learn graph node embeddings. One of their common under...
An information retrieval (IR) engine can rank documents based on textual proximityofkeywords within ...
An information retrieval (IR) engine can rank documents based on textual proximity of keywords withi...
International audienceIn large-scale online complex networks (Wikipedia, Facebook, Twitter, etc.) fi...
Spatial data mining recently emerges from a number of real applications, such as real-estate marketi...
Spatial data mining recently emerges from a number of real applications, such as real-estate marketi...
We introduce a new probabilistic proximity search algorithm for range and K-nearest neighbor (K-NN) ...
Path search between concepts over a semantic network is an issue of great interest for many applicat...
Abstract — The explosive growth of social networks has created numerous exciting research opportunit...
Mining graph patterns in large networks is critical to a vari-ety of applications such as malware de...
The objective of this article is to bridge the gap between two important research directions: (1) ne...
Graph Embedding methods are aimed at mapping each vertex into a low dimensional vector space, which ...
Relating, connecting and navigating between concepts represent a major challenge for machine intelli...