The large number of tweets generated daily is providing decision makers with means to obtain insights into recent events around the globe in near real-time. The main barrier for extracting such insights is the impossibility of manual inspection of a diverse and dynamic amount of information. This problem has attracted the attention of industry and research communities, resulting in algorithms for the automatic extraction of semantics in tweets and linking them to machine readable resources. While a tweet is shallowly comparable to any other textual content, it hides a complex and challenging structure that requires domain-specific computational approaches for mining semantics from it. The NEEL challenge series, established in 2013, has cont...
International audienceThis article describes our CRF named entity extractor for Twitter data. We fir...
We present a memory-based named entity recognition system that participated in the MSM-2013 Concept ...
Named entity recognition (NER) systems trained on newswire perform very badly when tested on Twitter...
The large number of tweets generated daily is providing policy makers with means to obtain insights ...
This work proposes a novel approach in Named Entity rEcognition and Linking (NEEL) in tweets, applyi...
Applying natural language processing for mining and intelligent information access to tweets (a form...
Twitter is a potentially rich source of continuously and instantly updated information. Shortness an...
Named Entity Linking (NEL) is the task of semantically annotating entity mentions in a portion of te...
This paper describes the participation of the UNIBA team in the Named Entity rEcognition and Linking...
Named Entity Linking (NEL) is the task of semantically annotating entity mentions in a portion of te...
Microposts are small fragments of social media content and a pop-ular medium for sharing facts, opin...
Named entity recognition (NER) is one of the well-studied sub-branch of natural language processing ...
Social media texts are significant informa-tion sources for several application areas including tren...
Abstract-Twitter has become one of the most important communication channels with its ability provid...
Twitter has become one of the most important communication channels with its ability of providing th...
International audienceThis article describes our CRF named entity extractor for Twitter data. We fir...
We present a memory-based named entity recognition system that participated in the MSM-2013 Concept ...
Named entity recognition (NER) systems trained on newswire perform very badly when tested on Twitter...
The large number of tweets generated daily is providing policy makers with means to obtain insights ...
This work proposes a novel approach in Named Entity rEcognition and Linking (NEEL) in tweets, applyi...
Applying natural language processing for mining and intelligent information access to tweets (a form...
Twitter is a potentially rich source of continuously and instantly updated information. Shortness an...
Named Entity Linking (NEL) is the task of semantically annotating entity mentions in a portion of te...
This paper describes the participation of the UNIBA team in the Named Entity rEcognition and Linking...
Named Entity Linking (NEL) is the task of semantically annotating entity mentions in a portion of te...
Microposts are small fragments of social media content and a pop-ular medium for sharing facts, opin...
Named entity recognition (NER) is one of the well-studied sub-branch of natural language processing ...
Social media texts are significant informa-tion sources for several application areas including tren...
Abstract-Twitter has become one of the most important communication channels with its ability provid...
Twitter has become one of the most important communication channels with its ability of providing th...
International audienceThis article describes our CRF named entity extractor for Twitter data. We fir...
We present a memory-based named entity recognition system that participated in the MSM-2013 Concept ...
Named entity recognition (NER) systems trained on newswire perform very badly when tested on Twitter...