Key issues in conducting sentiment analysis on Arabic social media text

S. Ahmed, M. Pasquier, G. Qadah
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引用次数: 56

Abstract

The problem of extracting sentiments from text is a very complex task, in particular due to the significant amount of Natural Language Processing (NLP) required. This task becomes even more difficult when dealing with morphologically rich languages such as Modern Standard Arabic (MSA) and when processing brief, noisy texts such as “tweets” or “Facebook statuses”. This paper highlights key issues researchers are facing and innovative approaches that have been developed when performing subjectivity and sentiment analysis (SSA) on Arabic text in general and Arabic social media text in particular. A preprocessing phase to sentiment analysis is proposed and shown to noticeably improve the results of sentiment extraction from Arabic social media data.
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对阿拉伯语社交媒体文本进行情感分析的关键问题
从文本中提取情感是一项非常复杂的任务,特别是由于需要大量的自然语言处理(NLP)。当处理形态丰富的语言,如现代标准阿拉伯语(MSA),以及处理简短、嘈杂的文本,如“tweet”或“Facebook状态”时,这项任务变得更加困难。本文重点介绍了研究人员在对阿拉伯语文本特别是阿拉伯社交媒体文本进行主观性和情感分析(SSA)时面临的关键问题和开发的创新方法。提出了一种情感分析的预处理阶段,并证明了该阶段可以显著改善从阿拉伯社交媒体数据中提取情感的结果。
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