Sentiment analysis of customer satisfaction levels on smartphone products using Ensemble Learning

Muhammad Ma’ruf, Adam Prayogo Kuncoro, Pungkas Subarkah, Faridatun Nida
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引用次数: 3

Abstract

Increasingly sophisticated technological developments create new ways for people to conduct trading business. An example of this technology application is the use of e-commerce. However, there are conditions where the seller cannot measure the level of satisfaction and identify problems experienced by his customers if it is only based on the rating as the case in smartphones transactions. Therefore, a solution is needed to create a system that can filter negative and positive comments. This study offers a solution to address this issue by using machine learning employing the K-Nearest Neighbors, SVM, and Naive Bayes algorithms with hyperparameters from previous studies. This study applied the ensemble learning method with the Voting Classifier technique, which is an algorithm to combine several algorithms that have been made. From the test results, the highest accuracy was obtained by SVM with an accuracy value of 91.18% while the ensemble learning method obtained an accuracy value of 89.22%. The difference in the accuracy of training and testing for SVM and ensemble learning method is 7.1% and 4% respectively. These results indicate that the ensemble learning method can help improve the performance of sentiment analysis algorithms for comments on smartphone products.
使用Ensemble Learning对智能手机产品客户满意度的情感分析
日益复杂的技术发展为人们开展贸易业务创造了新的方式。这种技术应用的一个例子是电子商务的使用。然而,在某些情况下,如果只是基于评级,卖家就无法衡量客户的满意度,也无法识别客户遇到的问题,就像智能手机交易的情况一样。因此,需要一个解决方案来创建一个可以过滤负面和正面评论的系统。本研究提供了一个解决方案,通过使用机器学习,采用k近邻,支持向量机和朴素贝叶斯算法与先前的研究中的超参数来解决这个问题。本研究将集成学习方法与投票分类器技术相结合,该算法是将已有的几种算法结合起来的一种算法。从测试结果来看,SVM的准确率最高,达到91.18%,而集成学习方法的准确率为89.22%。SVM与集成学习方法的训练和测试准确率差异分别为7.1%和4%。这些结果表明,集成学习方法可以帮助提高智能手机产品评论情感分析算法的性能。
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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