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Syntactic- and morphology-based text augmentation framework for Arabic sentiment analysis

机译:基于句法和形态学的阿拉伯语情绪分析的文本增强框架

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Arabic language is a challenging language for automatic processing. This is due to several intrinsic reasons such as Arabic multi-dialects, ambiguous syntax, syntactical flexibility and diacritics. Machine learning and deep learning frameworks require big datasets for training to ensure accurate predictions. This leads to another challenge faced by researches using Arabic text; as Arabic textual datasets of high quality are still scarce. In this paper, an intelligent framework for expanding or augmenting Arabic sentences is presented. The sentences were initially labelled by human annotators for sentiment analysis. The novel approach presented in this work relies on the rich morphology of Arabic, synonymy lists, syntactical or grammatical rules, and negation rules to generate new sentences from the seed sentences with their proper labels. Most augmentation techniques target image or video data. This study is the first work to target text augmentation for Arabic language. Using this framework, we were able to increase the size of the initial seed datasets by 10 folds. Experiments that assess the impact of this augmentation on sentiment analysis showed a 42% average increase in accuracy, due to the reliability and the high quality of the rules used to build this framework.
机译:阿拉伯语是一种充满挑战的自动加工语言。这是由于几种内在原因如阿拉伯多方面,暧昧语法,句法灵活性和变形物。机器学习和深度学习框架需要大型数据集进行培训,以确保准确的预测。这导致了使用阿拉伯语文本研究的另一个挑战;因为高品质的阿拉伯语文本数据集仍然稀缺。本文提出了一种扩展或增强阿拉伯语句子的智能框架。句子最初被人类注入者标记为情绪分析。在这项工作中呈现的新方法依赖于阿拉伯语,同义词列表,语法或语法规则的丰富形态和否定规则,并使用正确的标签从种子句中生成新句子。大多数增强技术目标图像或视频数据。本研究是第一个针对阿拉伯语的文本增强的工作。使用此框架,我们能够将初始种子数据集的大小增加10倍。评估这种增强对情绪分析的影响的实验表明,由于用于建立此框架的规则的可靠性和高质量的规则,准确性的平均水平增加42%。

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