Text-to-GQL (Text2GQL) is a task that converts the user's questions into GQL (Graph Query Language) when a graph database is given. That is a task of semantic parsing that transforms natural language problems into logical expressions, which will bring more efficient direct communication between humans and machines. The existing related work mainly focuses on Text-to-SQL tasks, and there is no available semantic parsing method and data set for the graph database. In order to fill the gaps in this field to serve the medical Human–Robot Interactions (HRI) better, we propose this task and a pipeline solution for the Text2GQL task. This solution uses the Adapter pre-trained by “the linking of GQL schemas and the corresponding utterances" as an e...
Recently, pre-trained language representation models such as bidirec tional encoder representations ...
With the rapid progress of the semantic web, a huge amount of structured data has become available o...
Recent advances in Natural Language Processing have substantially improved contextualized representa...
Text-to-GQL (Text2GQL) is a task that converts the user's questions into GQL (Graph Query Language) ...
The use of knowledge graphs (KGs) enhances the accuracy and comprehensiveness of the responses provi...
Nowadays the idea of injecting world or domain-specific structured knowledge into pre-trained langua...
Knowledge graphs are a powerful concept for querying large amounts of data. These knowledge graphs a...
International audienceWe propose the use of controlled natural language as a target for knowledge gr...
Question generation (QG) is defined as the task of generating questions automatically from a variety...
To meet the high-efficiency question answering needs of existing patients and doctors, this system i...
With the development of deep learning and its wide application in the field of natural language, the...
Subject to the huge semantic gap between natural and formal languages, neural semantic parsing is ty...
Human communication is inevitably grounded in the real world. Existing work on natural language proc...
Graph databases employ graph structures such as nodes, attributes and edges to model and store relat...
Recently, pre-trained language representation models such as bidirec tional encoder representations ...
With the rapid progress of the semantic web, a huge amount of structured data has become available o...
Recent advances in Natural Language Processing have substantially improved contextualized representa...
Text-to-GQL (Text2GQL) is a task that converts the user's questions into GQL (Graph Query Language) ...
The use of knowledge graphs (KGs) enhances the accuracy and comprehensiveness of the responses provi...
Nowadays the idea of injecting world or domain-specific structured knowledge into pre-trained langua...
Knowledge graphs are a powerful concept for querying large amounts of data. These knowledge graphs a...
International audienceWe propose the use of controlled natural language as a target for knowledge gr...
Question generation (QG) is defined as the task of generating questions automatically from a variety...
To meet the high-efficiency question answering needs of existing patients and doctors, this system i...
With the development of deep learning and its wide application in the field of natural language, the...
Subject to the huge semantic gap between natural and formal languages, neural semantic parsing is ty...
Human communication is inevitably grounded in the real world. Existing work on natural language proc...
Graph databases employ graph structures such as nodes, attributes and edges to model and store relat...
Recently, pre-trained language representation models such as bidirec tional encoder representations ...
With the rapid progress of the semantic web, a huge amount of structured data has become available o...
Recent advances in Natural Language Processing have substantially improved contextualized representa...