For non-expert users, a textual query is the most popular and simple means for communicating with a retrieval or question answering system.However, there is a risk of receiving queries which do not match with the background knowledge.Query expansion and query rewriting are solutions for this problem but they are in danger of potentially yielding a large number of irrelevant words, which in turn negatively influences runtime as well as accuracy.In this paper, we propose a new method for automatic rewriting input queries on graph-structured RDF knowledge bases.We employ a Hidden Markov Model to determine the most suitable derived words from linguistic resources.We introduce the concept of triple-based co-occurrence for recognizing co-occurred...
A promising pathway for natural language question answering over knowledge graphs (KG-QA) is to tran...
A promising pathway for natural language question answering over knowledge graphs (KG-QA) is to tran...
International audienceThe generation of referring expressions is one of the most extensively explore...
For non-expert users, a textual query is the most popular and simple means for communicating with a ...
© 2017 Association for Computing Machinery. The ever-increasing knowledge graphs impose an urgent de...
RDF question/answering (Q/A) allows users to ask questions in natural languages over a knowledge bas...
A challenging task in the natural language question answering (Q/A for short) over RDF knowledge gra...
Query-driven reasoning techniques with Datalog rules, like Magic Sets (MS), are ideal for implementi...
International audienceAnswering queries over Semantic Web data, i.e., RDF graphs, must account for b...
Knowledge graphs are a powerful concept for querying large amounts of data. These knowledge graphs a...
International audienceAnswering queries over Semantic Web data, i.e., RDF graphs, must account for b...
International audienceQuery answering in RDF knowledge bases has traditionally been performed either...
Semantic Web technologies and other open standards have the potential of allowing current open datas...
Keyword search is the most popular way to access information. In this paper we introduce a novel app...
A promising pathway for natural language question answering over knowledge graphs (KG-QA) is to tran...
A promising pathway for natural language question answering over knowledge graphs (KG-QA) is to tran...
International audienceThe generation of referring expressions is one of the most extensively explore...
For non-expert users, a textual query is the most popular and simple means for communicating with a ...
© 2017 Association for Computing Machinery. The ever-increasing knowledge graphs impose an urgent de...
RDF question/answering (Q/A) allows users to ask questions in natural languages over a knowledge bas...
A challenging task in the natural language question answering (Q/A for short) over RDF knowledge gra...
Query-driven reasoning techniques with Datalog rules, like Magic Sets (MS), are ideal for implementi...
International audienceAnswering queries over Semantic Web data, i.e., RDF graphs, must account for b...
Knowledge graphs are a powerful concept for querying large amounts of data. These knowledge graphs a...
International audienceAnswering queries over Semantic Web data, i.e., RDF graphs, must account for b...
International audienceQuery answering in RDF knowledge bases has traditionally been performed either...
Semantic Web technologies and other open standards have the potential of allowing current open datas...
Keyword search is the most popular way to access information. In this paper we introduce a novel app...
A promising pathway for natural language question answering over knowledge graphs (KG-QA) is to tran...
A promising pathway for natural language question answering over knowledge graphs (KG-QA) is to tran...
International audienceThe generation of referring expressions is one of the most extensively explore...