The Impact of Data Augmentation on Sentiment Analysis of Translated Textual Data

Thuraya Omran, B. Sharef, C. Grosan, Yongming Li
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引用次数: 1

Abstract

Sentiment analysis is an application of natural language processing that requires an abundance of data that may not be achieved sometimes for some reason. Data augmentation is one technique that deals with the lack of data by creating synthetic training data without adding new ones. It boosts model performance, especially with deep learning ones. Despite its influential role in boosting the model performance, it attracted very little attention from the researchers of the Arabic NLP community, specifically with scarce language resources such as Arabic and its dialects. In this study, one of the augmentation techniques called random swap was applied with LSTM deep learning model to classify three parallel datasets. The three parallel datasets are Bahraini dialects, Modern Standard Arabic and English. The results show an improvement in the LSTM model by 14.06%, 12.57%, and 11.04% on Bahraini dialects, Modern Standard Arabic, and English datasets, respectively, when applying the augmentation technique over that of no application.
数据扩充对翻译文本数据情感分析的影响
情感分析是自然语言处理的一种应用,它需要大量的数据,有时由于某些原因可能无法实现。数据增强是一种通过创建合成训练数据而不添加新数据来处理数据缺乏的技术。它提高了模型的性能,尤其是深度学习模型。尽管它在提高模型性能方面发挥了重要作用,但它很少受到阿拉伯语NLP社区研究人员的关注,特别是在阿拉伯语及其方言等语言资源稀缺的情况下。本研究将随机交换增强技术与LSTM深度学习模型相结合,对三个并行数据集进行分类。三个平行数据集分别是巴林方言、现代标准阿拉伯语和英语。结果表明,在巴林方言、现代标准阿拉伯语和英语数据集上,应用增强技术的LSTM模型分别比未应用增强技术的LSTM模型提高了14.06%、12.57%和11.04%。
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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