International audienceTransfer learning (TL) proposes to enhance machine learning performance on a problem, by reusing labeled data originally designed for a related problem. In particular, domain adaptation consists, for a specific task, in reusing training data developed for the same task but a distinct domain. This is particularly relevant to the applications of deep learning in Natural Language Processing, because those usually require large annotated corpora that may not exist for the targeted domain, but exist for side domains. In this paper, we experiment with TL for the task of Relation Extraction (RE) from biomedical texts, using the TreeLSTM model. We empirically show the impact of TreeLSTM alone and with domain adaptation by obta...
International audienceRelation Extraction (RE), the task of detecting and characterizing semantic re...
The body of biomedical literature is growing at an unprecedented rate, exceeding the ability of rese...
In this article, we study the relation extraction problem from Natural Language Processing (NLP) imp...
International audienceAbstract Background Transfer learning aims at enhancing machine learning perfo...
International audienceTransfer learning (TL) proposes to enhance machine learning performance on a p...
Held in conjunction with ECML-PKDD 2017International audienceA key aspect of machine learning-based ...
This thesis explores information extraction (IE) in \textit{low-resource} conditions, in which the q...
National audienceIn this paper2 , we model the corpus-based relation extraction task as a classifica...
Shanker, Vijay K.Wu, Cathy H.Biomedical relation extraction is an critical text-mining task that con...
Various tasks in natural language processing (NLP) suffer from lack of labelled training data, which...
International audienceRelation extraction is a core problem for natural language processing in the b...
Background: With the rapid expansion of biomedical literature, biomedical information extraction has...
International audienceRelation Extraction (RE), the task of detecting and characterizing semantic re...
The body of biomedical literature is growing at an unprecedented rate, exceeding the ability of rese...
In this article, we study the relation extraction problem from Natural Language Processing (NLP) imp...
International audienceAbstract Background Transfer learning aims at enhancing machine learning perfo...
International audienceTransfer learning (TL) proposes to enhance machine learning performance on a p...
Held in conjunction with ECML-PKDD 2017International audienceA key aspect of machine learning-based ...
This thesis explores information extraction (IE) in \textit{low-resource} conditions, in which the q...
National audienceIn this paper2 , we model the corpus-based relation extraction task as a classifica...
Shanker, Vijay K.Wu, Cathy H.Biomedical relation extraction is an critical text-mining task that con...
Various tasks in natural language processing (NLP) suffer from lack of labelled training data, which...
International audienceRelation extraction is a core problem for natural language processing in the b...
Background: With the rapid expansion of biomedical literature, biomedical information extraction has...
International audienceRelation Extraction (RE), the task of detecting and characterizing semantic re...
The body of biomedical literature is growing at an unprecedented rate, exceeding the ability of rese...
In this article, we study the relation extraction problem from Natural Language Processing (NLP) imp...