In this paper, we investigate an unsupervised approach to Relation Extraction to be applied in the context of automatic generation of multiple-choice questions (MCQs). The approach aims to identify the most important semantic relations in a document without assigning explicit labels to them in order to ensure broad coverage, unrestricted to predefined types of relations. The paper examines three different surface pattern types, each implementing different assumptions about linguistic expression of semantic relations between named entities. Our main findings indicate that the approach is capable of achieving high precision rates and its enhancement with linguistic knowledge helps to produce significantly better patterns. The intended applica...
In this work we propose a hybrid unsupervised approach for semantic relation extraction from Italian...
The main research question of this thesis is "how term and relation extraction techniques can contri...
This thesis aims to develop a Relation Extraction algorithm to extract knowledge out of automotive d...
A thesis submitted in partial fulfilment of the requirements of the University of Wolverhampton for ...
In this modern era many educational institutes and business organisations are adopting the e-Learnin...
Ontology instances are in general stored as triples which associate two related entities with pre-de...
In this research, an automatic multiple choice question generation system for evaluating semantic ro...
Thesis (Ph.D.)--University of Washington, 2012The ability to automatically convert natural language ...
International audienceThis paper deals with the extraction of semantic relations from scientific tex...
Extracting relation triplets from raw text is a crucial task in Information Extraction, enabling mul...
Automatic multiple-choice question generation (MCQG) is a useful yet challenging task in Natural Lan...
Most work on ontology learning from text relies on unsupervised methods for relation extraction insp...
Abstract. Relation extraction is a part of Information Extraction and an established task in Natural...
Joint extraction of entities and relations focuses on detecting entity pairs and their relations sim...
Finding the right features and patterns for identifying relations in natural language is one of the ...
In this work we propose a hybrid unsupervised approach for semantic relation extraction from Italian...
The main research question of this thesis is "how term and relation extraction techniques can contri...
This thesis aims to develop a Relation Extraction algorithm to extract knowledge out of automotive d...
A thesis submitted in partial fulfilment of the requirements of the University of Wolverhampton for ...
In this modern era many educational institutes and business organisations are adopting the e-Learnin...
Ontology instances are in general stored as triples which associate two related entities with pre-de...
In this research, an automatic multiple choice question generation system for evaluating semantic ro...
Thesis (Ph.D.)--University of Washington, 2012The ability to automatically convert natural language ...
International audienceThis paper deals with the extraction of semantic relations from scientific tex...
Extracting relation triplets from raw text is a crucial task in Information Extraction, enabling mul...
Automatic multiple-choice question generation (MCQG) is a useful yet challenging task in Natural Lan...
Most work on ontology learning from text relies on unsupervised methods for relation extraction insp...
Abstract. Relation extraction is a part of Information Extraction and an established task in Natural...
Joint extraction of entities and relations focuses on detecting entity pairs and their relations sim...
Finding the right features and patterns for identifying relations in natural language is one of the ...
In this work we propose a hybrid unsupervised approach for semantic relation extraction from Italian...
The main research question of this thesis is "how term and relation extraction techniques can contri...
This thesis aims to develop a Relation Extraction algorithm to extract knowledge out of automotive d...