L’articolo descrive la nostra partecipazione al task di Named Entity rEcognition and Linking in Italian Tweets (NEEL-IT) a Evalita 2016. Il nostro approccio si basa sull’utilizzo di un Named Entity tagger che sfrutta embeddings sia character-level che word-level. I primi consentono di apprendere le idiosincrasie della scrittura nei tweet. L’uso di un tagger completo consente di riconoscere uno spettro più ampio di entità rispetto a quelle conosciute per la loro presenza in Knowledge Base o gazetteer. Le prove sottomesse hanno ottenuto il primo, secondo e quarto dei punteggi ufficiali.The paper describes our sub-missions to the task on Named Entity rEcognition and Linking in Italian Tweets (NEEL-IT) at Evalita 2016. Our approach relies on a ...
This paper describes the participation of the UNIBA team in the Named Entity rEcognition and Linking...
This work proposes a novel approach in Named Entity rEcognition and Linking (NEEL) in tweets, applyi...
Named entity recognition (NER) is one of the well-studied sub-branch of natural language processing ...
L’articolo descrive la nostra partecipazione al task di Named Entity rEcognition and Linking in Ital...
This report describes the main outcomes of the 2016 Named Entity rEcognition and Linking in Italian ...
Questo articolo descrive il sistema proposto dal gruppo UNIMIB per il task di Named Enti...
Linking entity mentions in Italian tweets to concepts in a knowledge base is a challenging task, due...
In this paper we present the Mi- croNeel system for Named Entity Recognition and Entity Linking on I...
In questo articolo presentiamo il sistema MicroNeel per il riconoscimento e la disambiguazione di en...
Twitter is a potentially rich source of continuously and instantly updated information. Shortness an...
The large number of tweets generated daily is providing policy makers with means to obtain insights ...
Named Entity Linking (NEL) is the task of semantically annotating entity mentions in a portion of te...
Named Entity Linking (NEL) is the task of semantically annotating entity mentions in a portion of te...
The large number of tweets generated daily is providing decision makers with means to obtain insight...
Various recent studies show that the performance of named entity recognition (NER) systems developed...
This paper describes the participation of the UNIBA team in the Named Entity rEcognition and Linking...
This work proposes a novel approach in Named Entity rEcognition and Linking (NEEL) in tweets, applyi...
Named entity recognition (NER) is one of the well-studied sub-branch of natural language processing ...
L’articolo descrive la nostra partecipazione al task di Named Entity rEcognition and Linking in Ital...
This report describes the main outcomes of the 2016 Named Entity rEcognition and Linking in Italian ...
Questo articolo descrive il sistema proposto dal gruppo UNIMIB per il task di Named Enti...
Linking entity mentions in Italian tweets to concepts in a knowledge base is a challenging task, due...
In this paper we present the Mi- croNeel system for Named Entity Recognition and Entity Linking on I...
In questo articolo presentiamo il sistema MicroNeel per il riconoscimento e la disambiguazione di en...
Twitter is a potentially rich source of continuously and instantly updated information. Shortness an...
The large number of tweets generated daily is providing policy makers with means to obtain insights ...
Named Entity Linking (NEL) is the task of semantically annotating entity mentions in a portion of te...
Named Entity Linking (NEL) is the task of semantically annotating entity mentions in a portion of te...
The large number of tweets generated daily is providing decision makers with means to obtain insight...
Various recent studies show that the performance of named entity recognition (NER) systems developed...
This paper describes the participation of the UNIBA team in the Named Entity rEcognition and Linking...
This work proposes a novel approach in Named Entity rEcognition and Linking (NEEL) in tweets, applyi...
Named entity recognition (NER) is one of the well-studied sub-branch of natural language processing ...