Nadina Adelia Indrawan, Y. G. Sucahyo, Y. Ruldeviyani, Arfive Gandhi
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引用次数: 2
摘要
大众对基于零工经济的移动应用程序的需求越来越大。用户数量的增加将推动下载量和评论数的增长。然而,评论的数量使得开发人员很难理解评论中包含的信息。此外,一次复习可以包含多种信息。本研究提出了一种使用支持向量机(SVM)、多项式Naïve贝叶斯、互补Naïve贝叶斯分类器以及二值关联、分类器链和标签功率集作为数据转换方法对内容和情感评论进行分类的模型。本研究使用了Gojek、Sampingan和Ruang Guru应用程序中包含的评论,共有10,123条评论。本研究通过对Gojek应用的评价,发现复习文本的长度影响准确率。总的来说,本研究结果表明,SVM算法(包括情感评论分类和评论分类)和Label Power Sets作为转换方法获得了最好的准确率。
What Users Want for Gig Economy Platforms: Sentiment Analysis Approach
Gig economy-based mobile applications are increasingly in demand by the public. An increment in the number of users rises the number of downloads and reviews. However, the number of reviews makes it difficult for developers to understand the information contained in reviews. Besides, one review can have a variety of information. This study proposes a model that can categorize content and sentiment reviews using Support Vector Machine (SVM), Multinomial Naïve Bayes, Complement Naïve Bayes classifier, and Binary Relevance, Classifier Chain, and Label Power Sets as the data transformation method. This study used the reviews contained in the Gojek, Sampingan, and Ruang Guru applications, with 10,123 reviews. This study found the review text’s length influenced accuracy based on the evaluation of Gojek application. Generally, this study results showed that the SVM algorithm (both in the classification of sentiment reviews and review categorization) and Label Power Sets as the transformation method, yielded the best accuracy.