Arabic Tweet-Act: Speech Act Recognition for Arabic Asynchronous Conversations

Bushra Algotiml, AbdelRahim Elmadany, Walid Magdy
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引用次数: 6

Abstract

Speech acts are the actions that a speaker intends when performing an utterance within conversations. In this paper, we proposed speech act classification for asynchronous conversations on Twitter using multiple machine learning methods including SVM and deep neural networks. We applied the proposed methods on the ArSAS tweets dataset. The obtained results show that superiority of deep learning methods compared to SVMs, where Bi-LSTM managed to achieve an accuracy of 87.5% and a macro-averaged F1 score 61.5%. We believe that our results are the first to be reported on the task of speech-act recognition for asynchronous conversations on Arabic Twitter.
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阿拉伯语tweets -Act:阿拉伯语异步对话的语音行为识别
言语行为是说话人在对话中进行话语表达时所要做的动作。在本文中,我们使用包括SVM和深度神经网络在内的多种机器学习方法对Twitter上的异步会话进行语音行为分类。我们将提出的方法应用于ArSAS tweets数据集。所获得的结果表明,深度学习方法与支持向量机相比具有优势,其中Bi-LSTM的准确率达到87.5%,宏观平均F1分数达到61.5%。我们相信我们的结果是第一个关于阿拉伯语Twitter上异步对话的语音行为识别任务的报告。
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Morphology-aware Word-Segmentation in Dialectal Arabic Adaptation of Neural Machine Translation Arabic Tweet-Act: Speech Act Recognition for Arabic Asynchronous Conversations En-Ar Bilingual Word Embeddings without Word Alignment: Factors Effects Simple But Not Naïve: Fine-Grained Arabic Dialect Identification Using Only N-Grams The SMarT Classifier for Arabic Fine-Grained Dialect Identification
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