We propose a framework to improve the performance of distantly-supervised relation extraction, by jointly learning to solve two related tasks: concept-instance extraction and relation extraction. We further extend this framework to make a novel use of document structure: in some small, well-structured corpora, sections can be identified that correspond to relation arguments, and distantly-labeled examples from such sections tend to have good precision. Using these as seeds we extract additional relation examples by applying label propagation on a graph composed of noisy examples extracted from a large unstructured testing corpus. Combined with the soft constraint that concept examples should have the same type as the second argument of the...
Broad-coverage relation extraction either requires expensive supervised training data, or suffers fr...
Distant labeling for information extraction (IE) suffers from noisy training data. We describe a way...
This paper proposes a semi-supervised learn-ing method for relation extraction. Given a small amount...
Distant supervised relation extraction has been widely used to identify new relation facts from free...
Thesis (Ph.D.)--University of Washington, 2012The ability to automatically convert natural language ...
International audienceMost of Information Extraction (IE) systems are designed for extracting a rest...
International audienceMost of Information Extraction (IE) systems are designed for extracting a rest...
We investigate the task of distantly supervised joint entity relation extraction. It’s known that tr...
Distantly-supervised relation extraction has proven to be effective to find relational facts from te...
Distantly-supervised relation extraction has proven to be effective to find relational facts from te...
Sentence relation extraction aims to extract relational facts from sentences, which is an important ...
Distant supervision for relation extraction is an efficient method to reduce labor costs and has bee...
Abstract. Extracting information from Web pages requires the ability to work at Web scale in terms o...
Distant supervision usually utilizes only unlabeled data and existing knowledge bases to learn relat...
Broad-coverage relation extraction either requires expensive supervised training data, or suffers fr...
Broad-coverage relation extraction either requires expensive supervised training data, or suffers fr...
Distant labeling for information extraction (IE) suffers from noisy training data. We describe a way...
This paper proposes a semi-supervised learn-ing method for relation extraction. Given a small amount...
Distant supervised relation extraction has been widely used to identify new relation facts from free...
Thesis (Ph.D.)--University of Washington, 2012The ability to automatically convert natural language ...
International audienceMost of Information Extraction (IE) systems are designed for extracting a rest...
International audienceMost of Information Extraction (IE) systems are designed for extracting a rest...
We investigate the task of distantly supervised joint entity relation extraction. It’s known that tr...
Distantly-supervised relation extraction has proven to be effective to find relational facts from te...
Distantly-supervised relation extraction has proven to be effective to find relational facts from te...
Sentence relation extraction aims to extract relational facts from sentences, which is an important ...
Distant supervision for relation extraction is an efficient method to reduce labor costs and has bee...
Abstract. Extracting information from Web pages requires the ability to work at Web scale in terms o...
Distant supervision usually utilizes only unlabeled data and existing knowledge bases to learn relat...
Broad-coverage relation extraction either requires expensive supervised training data, or suffers fr...
Broad-coverage relation extraction either requires expensive supervised training data, or suffers fr...
Distant labeling for information extraction (IE) suffers from noisy training data. We describe a way...
This paper proposes a semi-supervised learn-ing method for relation extraction. Given a small amount...