基于支持向量机的银行BNI用户评论情感分析

Yuni Handayani, Alvin Rinaldy Hakim, Muljono
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引用次数: 2

摘要

信息和通信技术的快速发展使得社交媒体用户越来越多。纵观各种各样的社交媒体,它总是充斥着各种各样的服务用户,比如使用手机银行应用程序。在印尼,几乎所有的银行服务都使用BNI等银行设施。通过观察这些问题中出现的现象,我们对与BNI基于移动应用程序的服务相关的评论进行了研究,这些服务用于改善和更新BNI向客户提供的服务质量,使他们能够与其他银行竞争。因此,研究者旨在运用支持向量机媒体方法,将现有的BNI手机银行应用程序用户对Google Play服务的评论分为正面和负面评论情绪,旨在改进和更新BNI手机银行应用程序服务系统,为BNI用户提供服务满意度。在使用k-fold交叉验证测试进行的研究中,60%的数据训练和40%的数据测试得到的SVM核线性准确率值为78.19%,而80%的数据训练和20%的数据测试得到的准确率为76.94%,使用k-fold交叉验证的SVM核线性在10倍交叉验证时得到的准确率最高值为78.45%。该算法的计算量很轻,580个数据集的计算时间仅为2.5秒。K-Fold交叉验证被证明能够优化先前价值为78.19%的测试,而K-Fold交叉验证则上升到78.45%
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sentiment Analysis of Bank BNI User Comments Using the Support Vector Machine Method
The rapid development in the world of information and communication technology has made social media users increase. By looking at various kinds of social media, it is always filled with a variety of service users such as the use of mobile-based banking applications. In Indonesia, almost all banking services use banking facilities such as BNI. By looking at the phenomena that occur in these problems, a study was conducted on comments related to BNI mobile application-based services that are used to improve and update the quality of BNI services to customers so that they can compete with other banks. Thus the researcher aims at classifying the existing BNI Mobile Banking Application user comments on the Google Play service into positive and negative comment sentiment by applying the Support Vector Machine Media method which aims to improve and renew the BNI Mobile Banking Application service system to provide service satisfaction to users BNI. In research conducted using k-fold cross-validation testing obtained SVM kernel linear accuracy values of 78,19% for 60% data training and 40% data testing, meanwhile for 80% data training and 20% data testing get accuracy 76,94% and SVM kernel linear using K-Fold Cross Validation the highest value of 78,45% at 10 fold Cross-Validation. This algorithm has a lightweight computation as evidenced by a dataset of 580 data which only takes 2.5 seconds. K-Fold Cross Validation is proven to be able to optimize a test that was previously worth 78,19% with K-Fold Cross Validation rising to 78,45%
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