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DeepBlueAI at WANLP-EACL2021 task 2: A Deep Ensemble-based Method for Sarcasm and Sentiment Detection in Arabic

机译:WANLP-EACL2021的DeepBlueai任务2:一种基于深度的基于讽刺的讽刺和阿拉伯语的情绪检测方法

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Sarcasm is one of the main challenges for sentiment analysis systems due to using implicit indirect phrasing for expressing opinions, especially in Arabic. This paper presents the system we submitted to the Sarcasm and Sentiment Detection task of WANLP-2021 that is capable of dealing with both two subtasks. We first perform fine-tuning on two kinds of pre-trained language models (PLMs) with different training strategies. Then an effective stacking mechanism is applied on top of the fine-tuned PLMs to obtain the final prediction. Experimental results on ArSarcasm-v2 dataset show the effectiveness of our method and we rank third and second for subtask 1 and 2.
机译:由于使用隐含的间接措辞表达意见,特别是在阿拉伯语中,讽刺是情感分析系统的主要挑战之一。 本文提出了我们提交给WANLP-2021的讽刺和情绪检测任务的系统,该任务能够处理两个子组织。 我们首先用不同的培训策略对两种预先训练的语言模型(PLMS)进行微调。 然后将有效的堆叠机构应用于微调PLM的顶部以获得最终预测。 Arsarcasm-V2数据集上的实验结果显示了我们方法的有效性,我们为子任务1和2排名第三和第二。

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