Distant supervision for relation extraction is an efficient method to reduce labor costs and has been widely used to seek novel relational facts in large corpora, which can be identified as a multi-instance multi-label problem. However, existing distant supervision methods suffer from selecting important words in the sentence and extracting valid sentences in the bag. Towards this end, we propose a novel approach to address these problems in this paper. Firstly, we propose a linear attenuation simulation to reflect the importance of words in the sentence with respect to the distances between entities and words. Secondly, we propose a non-independent and identically distributed (non-IID) relevance embedding to capture the relevance of senten...
We propose a framework to improve the performance of distantly-supervised relation extraction, by jo...
The recent art in relation extraction is distant supervision which generates training data by heuris...
For the task of relation extraction, distant supervision is an efficient approach to generate labele...
Distant supervision usually utilizes only unlabeled data and existing knowledge bases to learn relat...
Distant supervision (DS) has been widely used for relation extraction (RE), which automatically gene...
Distant supervision leverages knowledge bases to automatically label instances, thus allowing us to ...
Several recent works on relation extraction have been applying the distant supervision paradigm: ins...
Distant supervision for relation extraction is an efficient method to scale relation extraction to v...
Sentence relation extraction aims to extract relational facts from sentences, which is an important ...
Machine learning approaches to relation extraction are typically supervised and require expensive la...
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 supervision is an efficient way to generate large-scale training data for relation extractio...
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...
We propose a framework to improve the performance of distantly-supervised relation extraction, by jo...
The recent art in relation extraction is distant supervision which generates training data by heuris...
For the task of relation extraction, distant supervision is an efficient approach to generate labele...
Distant supervision usually utilizes only unlabeled data and existing knowledge bases to learn relat...
Distant supervision (DS) has been widely used for relation extraction (RE), which automatically gene...
Distant supervision leverages knowledge bases to automatically label instances, thus allowing us to ...
Several recent works on relation extraction have been applying the distant supervision paradigm: ins...
Distant supervision for relation extraction is an efficient method to scale relation extraction to v...
Sentence relation extraction aims to extract relational facts from sentences, which is an important ...
Machine learning approaches to relation extraction are typically supervised and require expensive la...
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 supervision is an efficient way to generate large-scale training data for relation extractio...
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...
We propose a framework to improve the performance of distantly-supervised relation extraction, by jo...
The recent art in relation extraction is distant supervision which generates training data by heuris...
For the task of relation extraction, distant supervision is an efficient approach to generate labele...