Building a standard dataset for Arabie sentiment analysis: Identifying potential annotation pitfalls

M. Al-Kabi, Areej A. Al-Qwaqenah, Amal H. Gigieh, Kholoud Alsmearat, M. Al-Ayyoub, I. Alsmadi
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引用次数: 11

Abstract

Sentiment Analysis (SA) is one of the hottest research fields nowadays. It is concerned with identifying the sentiment conveyed in a piece of text. The current efforts in SA require the existence of standard datasets for training/testing purposes. Such datasets already exist for some languages such as English. Unfortunately, the same cannot be said about other languages such as Arabic. Currently existing Arabic SA datasets are restricted (in their domain, size, dialects covered, etc.) and/or have limited availability. Moreover, the annotation process did not receive the proper attention it deserves. Some of the existing datasets relied on the author's point of view for annotation, while others employed annotators, but did not take into account the personal variations between the annotators and how would that affect their agreement. This study presents our efforts to build a standard Arabic dataset with the above concerns in mind. The constructed dataset is intended for generic use as it contains reviews from different domains written in Modern Standard Arabic (MSA) as well as several dialects. As for the annotation process, it is given high attention by studying the inter-annotator agreements and investigating the potential factors affecting them.
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构建Arabie情感分析的标准数据集:识别潜在的注释陷阱
情感分析是当今最热门的研究领域之一。它关注的是识别一篇文章所传达的情感。当前SA的工作需要存在用于培训/测试目的的标准数据集。这样的数据集已经存在于一些语言中,比如英语。不幸的是,阿拉伯语等其他语言就不是这样了。目前现有的阿拉伯语SA数据集受到限制(在其领域、大小、涵盖的方言等方面)和/或可用性有限。此外,注释过程没有得到应有的适当重视。现有的一些数据集依赖于作者的观点进行注释,而其他数据集则使用注释者,但没有考虑到注释者之间的个人差异以及这会如何影响他们的一致性。本研究展示了我们在考虑上述问题的情况下建立标准阿拉伯语数据集的努力。构建的数据集旨在用于一般用途,因为它包含用现代标准阿拉伯语(MSA)以及几种方言编写的来自不同领域的评论。在标注过程中,通过对标注者间协议的研究和对影响标注者间协议的潜在因素的研究,对标注过程给予了高度重视。
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