Symeon Papadopoulos
2019
Brenda Starr at SemEval-2019 Task 4: Hyperpartisan News Detection
Olga Papadopoulou
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Giorgos Kordopatis-Zilos
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Markos Zampoglou
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Symeon Papadopoulos
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Yiannis Kompatsiaris
Proceedings of the 13th International Workshop on Semantic Evaluation
In the effort to tackle the challenge of Hyperpartisan News Detection, i.e., the task of deciding whether a news article is biased towards one party, faction, cause, or person, we experimented with two systems: i) a standard supervised learning approach using superficial text and bag-of-words features from the article title and body, and ii) a deep learning system comprising a four-layer convolutional neural network and max-pooling layers after the embedding layer, feeding the consolidated features to a bi-directional recurrent neural network. We achieved an F-score of 0.712 with our best approach, which corresponds to the mid-range of performance levels in the leaderboard.
2017
TOTEMSS: Topic-based, Temporal Sentiment Summarisation for Twitter
Bo Wang
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Maria Liakata
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Adam Tsakalidis
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Spiros Georgakopoulos Kolaitis
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Symeon Papadopoulos
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Lazaros Apostolidis
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Arkaitz Zubiaga
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Rob Procter
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Yiannis Kompatsiaris
Proceedings of the IJCNLP 2017, System Demonstrations
We present a system for time sensitive, topic based summarisation of the sentiment around target entities and topics in collections of tweets. We describe the main elements of the system and illustrate its functionality with two examples of sentiment analysis of topics related to the 2017 UK general election.