Nhan Le-Thanh
2017
Building timelines of soccer matches from Twitter
Amosse Edouard
|
Elena Cabrio
|
Sara Tonelli
|
Nhan Le-Thanh
Proceedings of the International Conference Recent Advances in Natural Language Processing, RANLP 2017
This demo paper presents a system that builds a timeline with salient actions of a soccer game, based on the tweets posted by users. It combines information provided by external knowledge bases to enrich the content of tweets and applies graph theory to model relations between actions (e.g. goals, penalties) and participants of a game (e.g. players, teams). In the demo, a web application displays in nearly real-time the actions detected from tweets posted by users for a given match of Euro 2016. Our tools are freely available at https://bitbucket.org/eamosse/event_tracking.
You’ll Never Tweet Alone: Building Sports Match Timelines from Microblog Posts
Amosse Edouard
|
Elena Cabrio
|
Sara Tonelli
|
Nhan Le-Thanh
Proceedings of the International Conference Recent Advances in Natural Language Processing, RANLP 2017
In this paper, we propose an approach to build a timeline with actions in a sports game based on tweets. We combine information provided by external knowledge bases to enrich the content of the tweets, and apply graph theory to model relations between actions and participants in a game. We demonstrate the validity of our approach using tweets collected during the EURO 2016 Championship and evaluate the output against live summaries produced by sports channels.
Graph-based Event Extraction from Twitter
Amosse Edouard
|
Elena Cabrio
|
Sara Tonelli
|
Nhan Le-Thanh
Proceedings of the International Conference Recent Advances in Natural Language Processing, RANLP 2017
Detecting which tweets describe a specific event and clustering them is one of the main challenging tasks related to Social Media currently addressed in the NLP community. Existing approaches have mainly focused on detecting spikes in clusters around specific keywords or Named Entities (NE). However, one of the main drawbacks of such approaches is the difficulty in understanding when the same keywords describe different events. In this paper, we propose a novel approach that exploits NE mentions in tweets and their entity context to create a temporal event graph. Then, using simple graph theory techniques and a PageRank-like algorithm, we process the event graphs to detect clusters of tweets describing the same events. Experiments on two gold standard datasets show that our approach achieves state-of-the-art results both in terms of evaluation performances and the quality of the detected events.
Search