arXiv Open Access 2019

Neural Architectures for Fine-Grained Propaganda Detection in News

Pankaj Gupta Khushbu Saxena Usama Yaseen Thomas Runkler Hinrich Schütze
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Abstrak

This paper describes our system (MIC-CIS) details and results of participation in the fine-grained propaganda detection shared task 2019. To address the tasks of sentence (SLC) and fragment level (FLC) propaganda detection, we explore different neural architectures (e.g., CNN, LSTM-CRF and BERT) and extract linguistic (e.g., part-of-speech, named entity, readability, sentiment, emotion, etc.), layout and topical features. Specifically, we have designed multi-granularity and multi-tasking neural architectures to jointly perform both the sentence and fragment level propaganda detection. Additionally, we investigate different ensemble schemes such as majority-voting, relax-voting, etc. to boost overall system performance. Compared to the other participating systems, our submissions are ranked 3rd and 4th in FLC and SLC tasks, respectively.

Topik & Kata Kunci

Penulis (5)

P

Pankaj Gupta

K

Khushbu Saxena

U

Usama Yaseen

T

Thomas Runkler

H

Hinrich Schütze

Format Sitasi

Gupta, P., Saxena, K., Yaseen, U., Runkler, T., Schütze, H. (2019). Neural Architectures for Fine-Grained Propaganda Detection in News. https://arxiv.org/abs/1909.06162

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2019
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en
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arXiv
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