Entities lie in the heart of biomedical natural language understanding, and the biomedical entity linking (EL) task remains challenging due to the fine-grained and diversiform concept names. Generative methods achieve remarkable performances in general domain EL with less memory usage while requiring expensive pre-training. Previous biomedical EL methods leverage synonyms from knowledge bases (KB) which is not trivial to inject into a generative method. In this work, we use a generative approach to model biomedical EL and propose to inject synonyms knowledge in it. We propose KB-guided pre-training by constructing synthetic samples with synonyms and definitions from KB and require the model to recover concept names. We also propose synonyms...
Motivation: The sheer volume of textually described biomedical knowledge exerts the need for natural...
International audienceBackground: Rapid advancements in biomedical research have accelerated the num...
Entity linking is the task of linking mentions of named entities in natural language text, to entiti...
Biomedical entity linking (EL) is the task of linking mentions in a biomedical document to correspon...
Biomedical entity linking aims to map biomedical mentions, such as diseases and drugs, to standard e...
International audienceBiomedical entity linking aims to map biomedical mentions, such as diseases an...
Background: The Entity Linking (EL) task links entity mentions from an unstructured document to enti...
Despite the widespread success of self-supervised learning via masked language models (MLM), accurat...
Biomedical named entity recognition is one of the core tasks in biomedical natural language processi...
Abstract Background Although there is an enormous number of textual resources in the biomedical doma...
Motivation: The sheer volume of textually described biomedical knowledge exerts the need for natural...
The growth rate in the amount of biomedical documents is staggering. Unlocking information trapped i...
Named entity recognition is critical for biomedical text mining, where it is not unusual to find ent...
MOTIVATION: The sheer volume of textually described biomedical knowledge exerts the need for natural...
Named Entities (NEs) in biomedical text refer to objects that are of interest to biomedical research...
Motivation: The sheer volume of textually described biomedical knowledge exerts the need for natural...
International audienceBackground: Rapid advancements in biomedical research have accelerated the num...
Entity linking is the task of linking mentions of named entities in natural language text, to entiti...
Biomedical entity linking (EL) is the task of linking mentions in a biomedical document to correspon...
Biomedical entity linking aims to map biomedical mentions, such as diseases and drugs, to standard e...
International audienceBiomedical entity linking aims to map biomedical mentions, such as diseases an...
Background: The Entity Linking (EL) task links entity mentions from an unstructured document to enti...
Despite the widespread success of self-supervised learning via masked language models (MLM), accurat...
Biomedical named entity recognition is one of the core tasks in biomedical natural language processi...
Abstract Background Although there is an enormous number of textual resources in the biomedical doma...
Motivation: The sheer volume of textually described biomedical knowledge exerts the need for natural...
The growth rate in the amount of biomedical documents is staggering. Unlocking information trapped i...
Named entity recognition is critical for biomedical text mining, where it is not unusual to find ent...
MOTIVATION: The sheer volume of textually described biomedical knowledge exerts the need for natural...
Named Entities (NEs) in biomedical text refer to objects that are of interest to biomedical research...
Motivation: The sheer volume of textually described biomedical knowledge exerts the need for natural...
International audienceBackground: Rapid advancements in biomedical research have accelerated the num...
Entity linking is the task of linking mentions of named entities in natural language text, to entiti...