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NLFIIT at SemEval-2020 Task 11: Neural Network Architectures for Detection of Propaganda Techniques in News Articles

机译:Semeval-2020的NLFIIT任务11:用于检测新闻文章中宣传技术的神经网络架构

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Since propaganda became more common technique in news, it is very important to look for possibilities of its automatic detection. In this paper, we present neural model architecture submitted to the SemEval-2020 Task 11 competition: "Detection of Propaganda Techniques in News Articles". We participated in both subtasks, propaganda span identification and propaganda technique classification. Our model utilizes recurrent Bi-LSTM layers with pre-trained word representations and also takes advantage of self-attention mechanism. Our model managed to achieve score 0.405 F1 for subtask 1 and 0.553 F1 for subtask 2 on test set resulting in 17th and 16th place in subtask 1 and subtask 2, respectively.
机译:由于宣传在新闻中变得更加常见的技术,因此寻找其自动检测的可能性非常重要。 在本文中,我们提出了提交给Semeval-2020任务11竞争的神经模型架构:“新闻文章中的宣传技术的检测”。 我们参与了宣传跨度识别和宣传技术分类。 我们的模型利用具有预先训练的字表示的经常性Bi-LSTM层,并利用自我关注机制。 我们的模型在测试集上实现了SubTask 1和0.553 F1的Subtask 1和0.553 F1的得分为0.405 f1,分别在子任务1和子任务2中产生17和16个位置。

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