Arabic Negation and Speculation Scope Detection: a Transformer-based Approach.

Ahmed Mahany, Heba Khaled, S. Ghoniemy
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Abstract

: Detecting the negation and speculation linguistic phenomena is vital for the performance of Arabic Natural Language Processing (ANLP) tasks. The negation and speculation scope detection problems have been addressed in a number of studies where most of them focused on the English and Spanish languages. This is due to the lack of corpora annotated for negation and speculation. In this work, the ArNeg corpus, annotated with negation, is extended by annotating it for the speculation to build the ArNegSpec corpus. In addition, we propose a transformer-based learning approach for detecting both the negation and speculation in Arabic texts. The AraBERT models with a Bidirectional Long Short-Term Memory and a Conditional Random Field (BiLSTM-CRF) as a sequence classification layer to achieve this goal. The results reached an F1 measure of 98% for cue identification for both negation and speculation. The proposed approach enhanced the evaluation results of the negation scope detection by 6% in terms of the F1 measure compared to the previous study. Furthermore, it achieved a 95% F1 measure for the speculation scope detection and a PCS value of 96% for both the negation and speculation scope. This approach shows the feasibility of transformer-based learning models in the sequence classification tasks as the detection of the negation and speculation in Arabic.
阿拉伯语否定和推测范围检测:一种基于变压器的方法。
发现否定和思辨语言现象对于阿拉伯语自然语言处理(ANLP)任务的执行至关重要。否定和推测范围检测问题已经在许多研究中得到解决,其中大多数研究集中在英语和西班牙语上。这是由于缺乏对否定和思辨进行标注的语料库。在这项工作中,用否定注释的arnegg语料库通过对其进行注释来扩展,以推测构建ArNegSpec语料库。此外,我们提出了一种基于转换的学习方法来检测阿拉伯语文本中的否定和推测。以双向长短期记忆和条件随机场(BiLSTM-CRF)作为序列分类层的AraBERT模型实现了这一目标。对于否定和推测的线索识别,结果达到了98%的F1测量。本文提出的方法在F1测度方面对阴性范围检测的评价结果较前人研究提高了6%。此外,对于投机范围检测,它实现了95%的F1度量,对于否定和投机范围,它实现了96%的PCS值。该方法显示了基于变换的学习模型在序列分类任务中作为阿拉伯语否定和推测检测的可行性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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