Sentiment analysis becomes an essential part of every social network, as it enables decision-makers to know more about users' opinions in almost all life aspects. Despite its importance, there are multiple issues it encounters like the sentiment of the sarcastic text which is one of the main challenges of sentiment analysis. This paper tackles this challenge by introducing a novel system (SAIDS) that predicts the sentiment, sarcasm and dialect of Arabic tweets. SAIDS uses its prediction of sarcasm and dialect as known information to predict the sentiment. It uses MARBERT as a language model to generate sentence embedding, then passes it to the sarcasm and dialect models, and then the outputs of the three models are concatenated and passed to the sentiment analysis model. Multiple system design setups were experimented with and reported. SAIDS was applied to the ArSarcasm-v2 dataset where it outperforms the state-of-the-art model for the sentiment analysis task. By training all tasks together, SAIDS achieves results of 75.98 FPN, 59.09 F1-score and 71.13 F1-score for sentiment analysis, sarcasm detection, and dialect identification respectively. The system design can be used to enhance the performance of any task which is dependent on other tasks.
翻译:感官分析是每个社会网络的一个基本部分,因为它使决策者能够更多地了解使用者对几乎所有生活方面的看法。尽管它很重要,但它遇到许多问题,例如讽刺性文字的情绪,这是情绪分析的主要挑战之一。本文通过引入一种新的系统(SAIDS)来应对这一挑战,该系统预测阿拉伯语推特的情绪、讽刺和方言。SAIDS利用对讽刺和方言的预测来预测情绪。它利用MARBERT作为语言模型来生成句嵌入,然后将其传递给讽刺性和方言模型,然后将三个模型的输出结果混为一体,传递到情绪分析模型中。多系统设计设置进行了试验和报告。SAIDS应用到ArSarcasm-V2数据集,它超越了情绪分析任务中的最新模型。SAIDS通过培训,SAIDER取得了7598 FPN、5909 F1-STRO和71-方言词模型的结果,然后将三个模型的输出结果传递到感官分析模型中。多个系统设计设置F1-13 任务可以分别用于增强性分析。