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Empirical Evaluation of Leveraging Named Entities for Arabic Sentiment Analysis

机译:用阿拉伯语情绪分析利用命名实体的实证评价

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摘要

Social media reflects the attitudes of the public towards specific events. Events are often related to persons, locations or organizations, the so-called Named Entities (NEs). This can define NEs as sentiment-bearing components. In this paper, we dive beyond NEs recognition to the exploitation of sentiment-annotated NEs in Arabic sentiment analysis. Therefore, we develop an algorithm to detect the sentiment of NEs based on the majority of attitudes towards them. This enabled tagging NEs with proper tags and, thus, including them in a sentiment analysis framework of two models: supervised and lexicon-based. Both models were applied on datasets of multi-dialectal content. The results revealed that NEs have no considerable impact on the supervised model, while employing NEs in the lexicon-based model improved the classification performance and outperformed most of the baseline systems.
机译:社交媒体反映了公众对特定事件的态度。事件通常与人员,地点或组织有关,即所谓的命名实体(NES)。这可以将NES定义为轴承组件。在本文中,我们超越了NES对阿拉伯语情绪分析中的情绪注释NES的认识。因此,我们开发一种算法,以基于对它们的大多数态度来检测NE的情绪。这使得具有适当标记的标记NE,因此,包括在两个模型的情感分析框架中,包括:监督和基于词汇。这两种模型都应用于多方方法内容的数据集。结果表明,NE对监督模型没有相当大的影响,同时在基于词汇的模型中使用NE,提高了分类性能并优于大多数基线系统。

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