Linking entity mentions in Italian tweets to concepts in a knowledge base is a challenging task, due to the short and noisy nature of these short messages and the lack of specific resources for Italian. This paper proposes an adaptation of a general purpose Named Entity Linking algorithm, which exploits the similarity measure computed over a Distributional Semantic Model, in the context of Italian tweets. In order to evaluate the proposed algorithm, we introduce a new dataset of tweets for entity linking that we have developed specifically for the Italian language
In this paper we present the Mi- croNeel system for Named Entity Recognition and Entity Linking on I...
Due to the spread of social media-based applications and the challenges posed by the treatment of so...
The large number of tweets generated daily is providing policy makers with means to obtain insights ...
Linking entity mentions in Italian tweets to concepts in a knowledge base is a challenging task, due...
This report describes the main outcomes of the 2016 Named Entity rEcognition and Linking in Italian ...
L’articolo descrive la nostra partecipazione al task di Named Entity rEcognition and Linking in Ital...
Questo articolo descrive il sistema proposto dal gruppo UNIMIB per il task di Named Enti...
International audienceIn many information extraction applications, entity linking (EL) has emerged a...
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...
Due to COVID19 pandemic, the 12th edition is cancelled.International audienceThe task of Entity link...
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...
International audienceDetecting which tweets are related to events and classifying them into categor...
Due to the spread of social media-based applications and the challenges posed by the treatment of so...
In this paper we present the Mi- croNeel system for Named Entity Recognition and Entity Linking on I...
Due to the spread of social media-based applications and the challenges posed by the treatment of so...
The large number of tweets generated daily is providing policy makers with means to obtain insights ...
Linking entity mentions in Italian tweets to concepts in a knowledge base is a challenging task, due...
This report describes the main outcomes of the 2016 Named Entity rEcognition and Linking in Italian ...
L’articolo descrive la nostra partecipazione al task di Named Entity rEcognition and Linking in Ital...
Questo articolo descrive il sistema proposto dal gruppo UNIMIB per il task di Named Enti...
International audienceIn many information extraction applications, entity linking (EL) has emerged a...
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...
Due to COVID19 pandemic, the 12th edition is cancelled.International audienceThe task of Entity link...
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...
International audienceDetecting which tweets are related to events and classifying them into categor...
Due to the spread of social media-based applications and the challenges posed by the treatment of so...
In this paper we present the Mi- croNeel system for Named Entity Recognition and Entity Linking on I...
Due to the spread of social media-based applications and the challenges posed by the treatment of so...
The large number of tweets generated daily is providing policy makers with means to obtain insights ...