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Empirical Evaluation of Shallow and Deep Learning Classifiers for Arabic Sentiment Analysis

机译:浅和深的经验评估学习分类器对阿拉伯语情绪分析

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摘要

This work presents a detailed comparison of the performance of deep learning models such as convolutional neural networks, long short-term memory, gated recurrent units, their hybrids, and a selection of shallow learning classifiers for sentiment analysis of Arabic reviews. Additionally, the comparison includes state-of-the-art models such as the transformer architecture and the araBERT pre-trained model. The datasets used in this study are multi-dialect Arabic hotel and book review datasets, which are some of the largest publicly available datasets for Arabic reviews. Results showed deep learning outperforming shallow learning for binary and multi-label classification, in contrast with the results of similar work reported in the literature. This discrepancy in outcome was caused by dataset size as we found it to be proportional to the performance of deep learning models. The performance of deep and shallow learning techniques was analyzed in terms of accuracy and F1 score. The best performing shallow learning technique was Random Forest followed by Decision Tree, and AdaBoost. The deep learning models performed similarly using a default embedding layer, while the transformer model performed best when augmented with araBERT.
机译:这项工作提出了一个详细的对比深度学习模型等的性能卷积神经网络,长期短期的记忆,封闭的复发性单位,他们的混合动力车,肤浅的学习分类器的选择阿拉伯的情绪分析评论。此外,包括进行了比较先进的模型,如变压器体系结构和araBERT pre-trained模型。在这项研究中使用的数据集是multi-dialect阿拉伯酒店和书评数据集,一些最大的公开数据集对阿拉伯语的评论。优于浅为二进制和学习多标记分类,形成鲜明对比类似的工作报告的结果文学。造成我们发现它是数据集的大小与深度学习的性能模型。学习技术方面的分析准确性和F1的分数。随机森林浅学习技术其次是决策树演算法。学习模型执行同样使用默认嵌入层,而变压器当用araBERT扩展模型表现最好。

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