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Deep Attentional Bidirectional LSTM for Arabic Sentiment Analysis In Twitter

机译:在推特中的阿拉伯语情绪分析深入预关注双向LSTM

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Along with the emergence of user reviews, emotions, feedback, and opinions in social networks towards a specific topic, product, event, or such a service. Sentiment Analysis has recently considered one of the fundamental research areas which lie at the intersection of numerous fields of research include data mining, computational linguistics, and Natural Language Processing (NLP). It concerns classifying a given piece of writing into sentiment polarity. Furthermore, deep learning has shown rich data modelling abilities to deal with complex and large datasets, in addition, it is recognized as the state-of-the-art based approach for different research fields. Although, the current state-of-the-art sentiment analysis tailored to the Arabic language still needs improvements because of its morphological richness, ambiguity, and lack of its resources. To advance this task, a novel Attentional Bidirectional LSTM architecture was proposed in order to determine richer semantic information and to extract the contextual information in both directions. We also investigated the effect of the word2vec pre-trained model to produce the word embeddings representation and to capture semantic information from Arabic tweets. To validate the performance of the proposed architecture, we assessed it in a holistic setting across three benchmark Arabic sentiment tweets datasets. Thus, the experimental results demonstrate that the proposed architecture outperforms the current state-of-the-art deep learning-based methods. Besides, it performs well compared with the baseline classical machine learning methods.
机译:随着用户评论,情感,反馈和社交网络中的意见的出现,迈向特定主题,产品,事件或此类服务。情绪分析最近被认为是躺在众多研究领域的基本研究领域的一个基本研究领域,包括数据挖掘,计算语言学和自然语言处理(NLP)。它涉及将给定的写作分类为情绪极性。此外,深度学习已经表现出丰富的数据建模能力来处理复杂和大型数据集,此外,它被认为是基于最先进的不同研究领域的方法。虽然,由于其形态丰富,歧义和缺乏资源,目前对阿拉伯语定制的最先进的情绪分析仍然需要改善。为了推进这项任务,提出了一种新的注意力双向LSTM架构,以便确定更丰富的语义信息并在两个方向上提取上下文信息。我们还调查了Word2VEC预训练模型的效果来产生嵌入式嵌入式表示,并捕获来自阿拉伯语推文的语义信息。为了验证所提出的架构的性能,我们将其评估在三个基准阿拉伯语情绪推文数据集的整体环境中。因此,实验结果表明,所提出的体系结构优于目前最先进的基于深入学习的方法。此外,它与基线古典机器学习方法相比良好。

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