Various tasks in natural language processing (NLP) suffer from lack of labelled training data, which deep neural networks are hungry for. In this paper, we relied upon features learned to generate relation triples from the open information extraction (OIE) task. First, we studied how transferable these features are from one OIE domain to another, such as from a news domain to a bio-medical domain. Second, we analyzed their transferability to a semantically related NLP task, namely, relation extraction (RE). We thereby contribute to answering the question: can OIE help us achieve adequate NLP performance without labelled data? Our results showed comparable performance when using inductive transfer learning in both experiments by relying on a...
Information extraction is a process that extracts limited semantic concepts from text documents and ...
A large number of Open Relation Extrac-tion approaches have been proposed recently, covering a wide ...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
Various tasks in natural language processing (NLP) suffer from lack of labelled training data, which...
This thesis explores information extraction (IE) in \textit{low-resource} conditions, in which the q...
International audienceAbstract Background Transfer learning aims at enhancing machine learning perfo...
The explosion of data has made it crucial to analyze the data and distill important information effe...
International audienceTransfer learning (TL) proposes to enhance machine learning performance on a p...
Natural language text, which exists in unstructured format, has a vast amount of knowledge about the...
Information extraction (IE) plays a significant role in automating the knowledge acquisition process...
The two key aspects of natural language processing (NLP) applications based on machine learning tec...
The explosion of mostly unstructured data has further motivated researchers to focus on Natural Lang...
The goal of open information extraction (OIE) is to extract facts from natural language text, and to...
This is the data for the paper "Using distant supervision to augment manually annotated data for rel...
Significant progress has been made in applying deep learning on natural language processing tasks re...
Information extraction is a process that extracts limited semantic concepts from text documents and ...
A large number of Open Relation Extrac-tion approaches have been proposed recently, covering a wide ...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
Various tasks in natural language processing (NLP) suffer from lack of labelled training data, which...
This thesis explores information extraction (IE) in \textit{low-resource} conditions, in which the q...
International audienceAbstract Background Transfer learning aims at enhancing machine learning perfo...
The explosion of data has made it crucial to analyze the data and distill important information effe...
International audienceTransfer learning (TL) proposes to enhance machine learning performance on a p...
Natural language text, which exists in unstructured format, has a vast amount of knowledge about the...
Information extraction (IE) plays a significant role in automating the knowledge acquisition process...
The two key aspects of natural language processing (NLP) applications based on machine learning tec...
The explosion of mostly unstructured data has further motivated researchers to focus on Natural Lang...
The goal of open information extraction (OIE) is to extract facts from natural language text, and to...
This is the data for the paper "Using distant supervision to augment manually annotated data for rel...
Significant progress has been made in applying deep learning on natural language processing tasks re...
Information extraction is a process that extracts limited semantic concepts from text documents and ...
A large number of Open Relation Extrac-tion approaches have been proposed recently, covering a wide ...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...