Querying graph structured data is a fundamental operation that enables important applications including knowledge graph search, social network analysis, and cyber-network security. However, the growing size of real-world data graphs poses severe challenges for graph databases to meet the response-time requirements of the applications. Planning the computational steps of query processing — Query Planning — is central to address these challenges. In this paper, we study the problem of learning to speedup query planning in graph databases towards the goal of improving the computational-efficiency of query processing via training queries. We present a Learning to Plan (L2P) framework that is applicable to a large class of query reasoners that f...
Querying complex graph databases such as knowledge graphs is a challenging task for non-professional...
Subgraph/supergraph queries although central to graph analytics, are costly as they entail the NP-Co...
Many applications require efficient management and querying of graph structured data. For example, S...
With the rise of the Internet, social computing and numerous mobile applications have brought about ...
The last decade brought considerable improvements in distributed storage and query technologies, kno...
Graphs are used in various application areas such as chemical, social or shareholder network analysi...
We consider the task of exploratory search through graph queries on knowledge graphs. We propose to ...
Query graph construction aims to construct the correct executable SPARQL on the KG to answer natural...
Graphs are used in various application areas such as chemical, social or shareholder network analysi...
this paper, we propose a simple graph based query language. In this language, both the query and its...
A fast response is critical in many data-intensive applications, including knowledge discovery analy...
Thesis (Ph.D.), Computer Science, Washington State UniversityExploring graph-structured data either ...
AbstractModern day's queries are posed on database spread across the globe, this may impose a challe...
Nowadays graphs have been using intensively in many applications because of its power to represent m...
Keyword query is more user-friendly than the structured query (SQL, XQuery, SPARQL)as it requires no...
Querying complex graph databases such as knowledge graphs is a challenging task for non-professional...
Subgraph/supergraph queries although central to graph analytics, are costly as they entail the NP-Co...
Many applications require efficient management and querying of graph structured data. For example, S...
With the rise of the Internet, social computing and numerous mobile applications have brought about ...
The last decade brought considerable improvements in distributed storage and query technologies, kno...
Graphs are used in various application areas such as chemical, social or shareholder network analysi...
We consider the task of exploratory search through graph queries on knowledge graphs. We propose to ...
Query graph construction aims to construct the correct executable SPARQL on the KG to answer natural...
Graphs are used in various application areas such as chemical, social or shareholder network analysi...
this paper, we propose a simple graph based query language. In this language, both the query and its...
A fast response is critical in many data-intensive applications, including knowledge discovery analy...
Thesis (Ph.D.), Computer Science, Washington State UniversityExploring graph-structured data either ...
AbstractModern day's queries are posed on database spread across the globe, this may impose a challe...
Nowadays graphs have been using intensively in many applications because of its power to represent m...
Keyword query is more user-friendly than the structured query (SQL, XQuery, SPARQL)as it requires no...
Querying complex graph databases such as knowledge graphs is a challenging task for non-professional...
Subgraph/supergraph queries although central to graph analytics, are costly as they entail the NP-Co...
Many applications require efficient management and querying of graph structured data. For example, S...