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Subword Attentive Model for Arabic Sentiment Analysis: A Deep Learning Approach

机译:阿拉伯语情绪分析的子字分级模型:深入学习方法

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摘要

Social media data is unstructured data where these big data are exponentially increasing day to day in many different disciplines. Analysis and understanding the semantics of these data are a big challenge due to its variety and huge volume. To address this gap, unstructured Arabic texts have been studied in this work owing to their abundant appearance in social media Web sites. This work addresses the difficulty of handling unstructured social media texts, particularly when the data at hand is very limited. This intelligent data augmentation technique that handles the problem of less availability of data are used. This article has proposed a novel architecture for hand Arabic words classification and understands based on convolutional neural networks (CNNs) and recurrent neural networks. Moreover, the CNN technique is the most powerful for the analysis of Arabic tweets and social network analysis. The main technique used in this work is character-level CNN and a recurrent neural network stacked on top of one another as the classification architecture. These two techniques give 95% accuracy in the Arabic texts dataset.
机译:社交媒体数据是非结构化数据,其中这些大数据在许多不同学科中的日期是指数增长的。分析和了解这些数据的语义是由于其种类和巨大的体积造成的重大挑战。为了解决这一差距,由于它们在社交媒体网站上的丰富外观,因此在这项工作中已经研究了非结构化的阿拉伯语文本。这项工作解决了处理非结构化的社交媒体文本的难度,特别是当手头的数据非常有限时。这种智能数据增强技术,处理较少可用性的数据的问题。本文提出了一种基于卷积神经网络(CNNS)和经常性神经网络的手阿拉伯语分类和理解的新型架构。此外,CNN技术对于分析阿拉伯语推文和社会网络分析是最强大的。在本作工作中使用的主要技术是字符级CNN和作为分类架构的彼此叠加的反复性神经网络。这两种技术在阿拉伯文本数据集中提供了95%的准确性。

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