面向顾客评论的情感分析:以GO-JEK扩展为例

Alifia Revan Prananda, I. Thalib
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引用次数: 12

摘要

背景:市场预测是一件需要深入分析的重要事情。商业智能成为分析市场需求和满意度的重要分析手段。由于商业智能需要深入的分析,情感分析成为商业智能分析中分析客户评论的一种强大算法。目的:在本研究中,我们对GO-JEK中的商业智能分析进行情感分析。方法:我们使用从Twint库中收集的Twitter帖子,该库包含3111条推文。由于数据集没有提供一个基本的事实,我们执行微软文本分析来确定积极、中立和消极的情绪。在应用微软文本分析之前,我们进行了预处理步骤,以去除不需要的数据,如重复的推文,图像,网站地址等。结果:根据微软文本分析,结果是666个积极情绪数,2055个中立情绪数和127个消极情绪数。结论:根据这些结果,我们得出GO-JEK的大部分客户对GO-JEK的服务是满意的。在本研究中,我们还开发了分类模型来预测新数据的情感分析。我们使用了一些分类算法,如决策树,Naïve贝叶斯,支持向量机和神经网络。结果表明,决策树的性能最好。
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 for Customer Review: Case Study of GO-JEK Expansion
Background: Market prediction is an important thing that needs to be analyzed deeply. Business intelligence becomes an important analysis procedure for analyzing the market demand and satisfaction. Since business intelligence needs a deep analysis, sentiment analysis becomes a powerful algorithm for analyzing customer review regarding to the business intelligence analysis.Objective: In this study, we perform a sentiment analysis for identifying the business intelligence analysis in GO-JEK.Methods: We use Twitter posts collected from the Twint library which consists of 3111 tweets. Since the dataset did not provide a ground truth, we perform Microsoft Text Analytic for determining positive, neutral, and negative sentiment. Before applying Microsoft Text Analytic, we conduct a pre-processing step to remove the unwanted data such as duplicate tweets, image, website address, etc.Results: According to the Microsoft Text Analytic, the results are 666 positive sentiment numbers, 2055 neutral sentiment numbers, and 127 negative sentiment numbers.Conclusion:  According to these results, we conclude that most GO-JEK customers are satisfied with the GO-JEK services. In this research, we also develop classification model to predict the sentiment analysis of new data. We use some classifier algorithms such as Decision Tree, Naïve Bayes, Support Vector Machine and Neural Network. In the result, the system shows      that the decision tree provides the best performance.
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