We present an approach for extracting relations from texts that exploits linguistic and empirical strategies, by means of a pipeline method involving a parser, partof-speech tagger, named entity recognition system, pattern-based classification and word sense disambiguation models, and resources such as ontology, knowledge base and lexical databases. The relations extracted can be used for various tasks, including semantic web annotation and ontology learning. We suggest that the use of knowledge intensive strategies to process the input text and corpusbased techniques to deal with unpredicted cases and ambiguity problems allows to accurately discover the relevant relations between pairs of entities in that text
Information Extraction (IE) aims at mapping texts into fixed structure representing the key informat...
Recently, the NLP community has shown a renewed interest in automatic recognition of semantic relati...
In recent years the amount of unstructured data stored on the Internet and other digital sources has...
We present an approach for extracting relations from texts that exploits linguistic and empirical st...
We present an approach for relation extraction from texts aimed to enrich the semantic annotations p...
In this thesis we propose an unsupervised system for semantic relation extraction from texts. The au...
We present a strategy to automate the extraction of semantic relations from texts. Both machine lear...
Abstract. Most work on ontology learning from text relies on un-supervised methods for relation extr...
Facing the challenges of annotating naturally occur-ring text into semantic structured form for auto...
Most work on ontology learning from text relies on unsupervised methods for relation extraction insp...
Abstract. Automatic identification of semantic relations in text is a difficult problem, but is impo...
Extraction of semantic relations from English text is the topic of this thesis. It focuses on exploi...
Abstract. Ontology learning from text can be viewed as auxilliary technology for knowledge managemen...
Semantic relations between concepts or entities exist in textual documents, keywords or key phrases,...
International audienceAlthough looking for semantic relations in text has been the topic of a large ...
Information Extraction (IE) aims at mapping texts into fixed structure representing the key informat...
Recently, the NLP community has shown a renewed interest in automatic recognition of semantic relati...
In recent years the amount of unstructured data stored on the Internet and other digital sources has...
We present an approach for extracting relations from texts that exploits linguistic and empirical st...
We present an approach for relation extraction from texts aimed to enrich the semantic annotations p...
In this thesis we propose an unsupervised system for semantic relation extraction from texts. The au...
We present a strategy to automate the extraction of semantic relations from texts. Both machine lear...
Abstract. Most work on ontology learning from text relies on un-supervised methods for relation extr...
Facing the challenges of annotating naturally occur-ring text into semantic structured form for auto...
Most work on ontology learning from text relies on unsupervised methods for relation extraction insp...
Abstract. Automatic identification of semantic relations in text is a difficult problem, but is impo...
Extraction of semantic relations from English text is the topic of this thesis. It focuses on exploi...
Abstract. Ontology learning from text can be viewed as auxilliary technology for knowledge managemen...
Semantic relations between concepts or entities exist in textual documents, keywords or key phrases,...
International audienceAlthough looking for semantic relations in text has been the topic of a large ...
Information Extraction (IE) aims at mapping texts into fixed structure representing the key informat...
Recently, the NLP community has shown a renewed interest in automatic recognition of semantic relati...
In recent years the amount of unstructured data stored on the Internet and other digital sources has...