Cross-domain sentiment analysis model on Indonesian YouTube comment

A. Aribowo, H. Basiron, N. Yusof, S. Khomsah
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引用次数: 4

Abstract

A cross-domain sentiment analysis (CDSA) study in the Indonesian language and tree-based ensemble machine learning is quite interesting. CDSA is useful to support the labeling process of cross-domain sentiment and reduce any dependence on the experts; however, the mechanism in the opinion unstructured by stop word, language expressions, and Indonesian slang words is unidentified yet. This study aimed to obtain the best model of CDSA for the opinion in Indonesia language that commonly is full of stop words and slang words in the Indonesian dialect. This study was purposely to observe the benefits of the stop words cleaning and slang words conversion in CDSA in the Indonesian language form. It was also to find out which machine learning method is suitable for this model. This study started by crawling five datasets of the comments on YouTube from 5 different domains. The dataset was copied into two groups: the dataset group without any process of stop word cleaning and slang word conversion and the dataset group to stop word cleaning and slang word conversion. CDSA model was built for each dataset group and then tested using two types of tree-based ensemble machine learning, i.e., Random Forest (RF) and Extra Tree (ET) classifier, and tested using three types of non-ensemble machine learning, including Naïve Bayes (NB), SVM, and Decision Tree (DT) as the comparison. Then, It can be suggested that the accuracy of CDSA in Indonesia Language increased if it still removed the stop words and converted the slang words. The best classifier model was built using tree-based ensemble machine learning, particularly ET, as in this study, the ET model could achieve the highest accuracy by 91.19%. This model is expected to be the CDSA technique alternative in the Indonesian language.
印尼语YouTube评论的跨域情感分析模型
印尼语和基于树的集成机器学习的跨域情感分析(CDSA)研究非常有趣。CDSA有助于支持跨域情感的标注过程,减少对专家的依赖;然而,该意见中由停止词、语言表达和印度尼西亚俚语组成的机制尚未确定。本研究旨在针对印尼语方言中普遍充斥着停顿词和俚语的印尼语观点,获得最佳的CDSA模型。本研究旨在观察印尼语形式CDSA中停止词清理和俚语词转换的效果。这也是为了找出哪种机器学习方法适合于这个模型。这项研究首先从YouTube上5个不同领域的评论中抓取5个数据集。将数据集复制成两组:不进行停止词清洗和俚语词转换的数据集组和停止词清洗和俚语词转换的数据集组。对每个数据集组建立CDSA模型,然后使用随机森林(RF)和额外树(ET)两种基于树的集成机器学习进行测试,并使用Naïve贝叶斯(NB)、SVM和决策树(DT)三种非集成机器学习进行测试作为比较。因此,印尼语中CDSA的准确率在去掉停顿词并转换俚语的情况下有所提高。使用基于树的集成机器学习构建了最好的分类器模型,特别是ET,在本研究中,ET模型的准确率最高,达到91.19%。该模型有望成为印尼语中CDSA技术的替代方案。
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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来源期刊
International Journal of Advances in Intelligent Informatics
International Journal of Advances in Intelligent Informatics Computer Science-Computer Vision and Pattern Recognition
CiteScore
3.00
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