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JU_ETCE_17_21 at SemEval-2019 Task 6: Efficient Machine Learning and Neural Network Approaches for Identifying and Categorizing Offensive Language in Tweets

机译:JU_ETCE_17_21 at SemEval-2019任务6:高效的机器学习和神经网络方法,用于对推文中的冒犯性语言进行识别和分类

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This paper describes our system submissions as part of our participation (team name: JU_ETCE_17_21) in the SemEval 2019 shared task 6: "OffensEval: Identifying and Categorizing Offensive Language in Social Media". We participated in all the three sub-tasks: i) Sub-task A: offensive language identification, ii) Sub-task B: automatic categorization of offense types, and iii) Sub-task C: offense target identification. We employed machine learning as well as deep learning approaches for the sub-tasks. We employed Convolutional Neural Network (CNN) and Recursive Neural Network (RNN) Long Short-Term Memory (LSTM) with pre-trained word embeddings. We used both word2vec and Glove pre-trained word embeddings. We obtained the best Fl-score using CNN based model for sub-task A, LSTM based model for sub-task B and Logistic Regression based model for sub-task C. Our best submissions achieved 0.7844, 0.5459 and 0.48 F1-scores for sub-task A, sub-task B and sub-task C respectively.
机译:本文介绍了我们的系统提交,作为我们参与的一部分(团队名称:ju_etce_17_21)在Semeval 2019年共享任务6:“offenseval:在社交媒体中识别和分类令人反感语言”。我们参加了所有三个子任务:i)子任务a:冒犯语言识别,ii)子任务b:冒犯类型的自动分类,iii)子任务c:冒犯目标识别。我们使用机器学习以及子任务的深度学习方法。我们使用卷积神经网络(CNN)和递归神经网络(RNN)长短短期存储器(LSTM),具有预先训练的单词嵌入。我们使用Word2Vec和手套预先训练的单词嵌入。我们使用基于CNN任务A,基于LSTM的模型的基于CNN的模型获得了最佳流动分数,以及用于子任务C的逻辑回归基于逻辑回归模型。我们的最佳提交达到了0.7844,0.5459和0.48 F1分数 - 分别为A,子任务B和子任务C.

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