评估阿拉伯语情感分析的SentiStrength

Abdullateef Rabab'ah, M. Al-Ayyoub, Y. Jararweh, M. Al-Kabi
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引用次数: 28

摘要

如今,社交网站被用作一个平台,让用户可以写下几乎任何事情。社交媒体用户表达了他们对日常生活中发生的许多事件的看法和感受。很多研究都是为了研究社交媒体用户对不同话题的情绪表现。情感分析是一个新兴的研究领域,它关注的是对给定文本中所呈现的情感进行测量。由于具有广泛的应用程序集,因此有几种SA工具可用。它们中的大多数是为英语文本设计的。至于阿拉伯语等其他语言,情况就不同了,因为可用的工具很少。事实上,许多这些工具最初是为英语设计的,后来被用于处理阿拉伯语。SentiStrength是一个在英语中取得成功的工具,后来被用于阿拉伯语。然而,这种适应是粗糙的,没有深入的研究来衡量这些工具对阿拉伯语文本的有效性。在本文中,我们使用11个阿拉伯语数据集对SentiStrength进行了全面评估,这些数据集由来自不同领域和不同方言的数万条评论/评论组成。我们根据积极情绪和消极情绪来进行评估。评估结果表明,总体上SentiStrength达到62%的正确率,83.7%的精密度,64%的召回率(正正确率),68%的F1测量和55%的负正确率。
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Evaluating SentiStrength for Arabic Sentiment Analysis
Social networking websites are used today as platforms enabling their users to write down almost anything about everything. Social media users express their opinions and feelings about lots of events occurring in their daily lives. Lots of studies are conducted to study the sentiments presented by social media users regarding different topics. Sentiment Analysis (SA) is a new field that is concerned with measuring the sentiment presented in a given text. Due to their wide set of applications, several SA tools are available. Most of them are designed for English text. As for other languages such as Arabic, the case is different since only few tools are available. In fact, many of these tools were originally designed for English and were later adapted to deal with Arabic. SentiStrength is an example of tools that are successful for English and were later adapted to Arabic. However, the adaptation has been done in a crude manner and no deep studies are available to measure the effectiveness of such tools for Arabic text. In this paper, we perform a comprehensive evaluation of SentiStrength using 11 Arabic datasets consisting of tens of thousands of reviews/comments from different domains and in different dialects. We perform the evaluation in terms of positive and negative sentiments. The evaluation results show that overall SentiStrength achieves 62% accuracy, 83.7% precision, 64% recall (positive correct), 68% F1 measure and 55% negative correct.
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