In this paper we use Nooj to solve a recognition and translation task on medical terms with a morphosemantic approach. The Medical domain is characterized by a huge number of different terms that appear in corpora with very low frequencies. For this reason, machine learning or statistical approaches do not achieve good results on this domain. In our work we apply a morpho-semantic approach that take advantage from a number of Italian and English word-formation strategies for the automatic analysis of Italian words and for the generation of Italian/English bilingual lexicons in the medical sub-code. Using Nooj we built a series of Italian and bilingual dictionaries of morphemes, a set of morphological grammars that specify how morphemes comb...
Due to the importance of the information it conveys, Medical Entity Recognition is one of the most i...
We present results of the collaboration of a multi-national team of researchers from (computational)...
The aim of this paper is to present a multilingual method for the structuration of biomedical lexico...
In this paper we use Nooj to solve a recognition and translation task on medical terms with a morpho...
To efficiently extract and manage an extremely large quantity of meaningful data, into a delicate s...
In this work we introduce the first steps toward the development of a machine translation system for...
Because of the importance of the information conveyed by the clinical documents and owing to the lar...
The main topic of this paper is to describe how to transform effectively the “lexical matter” of a l...
In the age of Semantic Web, one of the most valuable challenges is the one connected with the inform...
International audienceThis paper addresses the issue of how semantic information can be automaticall...
International audienceThis paper addresses the issue of how semantic information can be automaticall...
Medical words exhibit a rich and productive morphol-ogy. Beyond simple inflection, derivation and co...
Lexicons and morphological analysers are at the core of many NLP applications, such as lemmatisation...
We address the problem of recognition of medical entities in clinical records written in Italian. We...
Due to the importance of the information it conveys, Medical Entity Recognition is one of the most i...
We present results of the collaboration of a multi-national team of researchers from (computational)...
The aim of this paper is to present a multilingual method for the structuration of biomedical lexico...
In this paper we use Nooj to solve a recognition and translation task on medical terms with a morpho...
To efficiently extract and manage an extremely large quantity of meaningful data, into a delicate s...
In this work we introduce the first steps toward the development of a machine translation system for...
Because of the importance of the information conveyed by the clinical documents and owing to the lar...
The main topic of this paper is to describe how to transform effectively the “lexical matter” of a l...
In the age of Semantic Web, one of the most valuable challenges is the one connected with the inform...
International audienceThis paper addresses the issue of how semantic information can be automaticall...
International audienceThis paper addresses the issue of how semantic information can be automaticall...
Medical words exhibit a rich and productive morphol-ogy. Beyond simple inflection, derivation and co...
Lexicons and morphological analysers are at the core of many NLP applications, such as lemmatisation...
We address the problem of recognition of medical entities in clinical records written in Italian. We...
Due to the importance of the information it conveys, Medical Entity Recognition is one of the most i...
We present results of the collaboration of a multi-national team of researchers from (computational)...
The aim of this paper is to present a multilingual method for the structuration of biomedical lexico...