Topic Sentiment Using Logistic Regression and Latent Dirichlet Allocation as a Customer Satisfaction Analysis Model

Puji Winar Cahyo, Ulfi Saidata Aesyi, Bagas Dwi Santosa
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Abstract

Buying and selling goods now is more interesting through e-commerce or marketplaces because of the ease of carrying out online transactions. Each transaction usually generates a response from the customer. The transaction response on the Shopee platform is still in paragraph form and needs to be more specific. Therefore, this research aims to build a model analysis of customer satisfaction using the best algorithm between support vector machine (SVM), random forest, and logistic regression. This research method uses sentiment classification with logistic regression because the logistic regression algorithm has the best accuracy, with an accuracy of 90.5. Meanwhile, the SVM algorithm achieved an accuracy of 90.4, and random forest reached 90.2. The three algorithms were tested three times, splitting data train:test at 80:20, 70:30, and 60:40. The best results were obtained by splitting data at 60:40. The best model is used to predict data without labels. The prediction produces 12,844 positive sentiment comment data, 112 negative sentiment comment data, and 70 neutral sentiment comment data. The results of this research continued to topic modeling using latent dirichlet allocation (LDA) to generate a trending topic of customer satisfaction on sales products. Implications of discussing each trend topic can be used as a reference for improving products and services, especially in communicating with customers.
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使用 Logistic 回归和潜在 Dirichlet 分配作为客户满意度分析模型的主题情感
现在,通过电子商务或市场平台买卖商品更加有趣,因为在线交易非常方便。每笔交易通常都会得到客户的回复。Shopee 平台上的交易回复仍是段落形式,需要更加具体。因此,本研究旨在使用支持向量机(SVM)、随机森林和逻辑回归之间的最佳算法建立客户满意度分析模型。本研究方法采用逻辑回归进行情感分类,因为逻辑回归算法的准确率最高,达到 90.5。同时,SVM 算法的准确率达到了 90.4,随机森林达到了 90.2。对这三种算法进行了三次测试,按 80:20、70:30 和 60:40 的比例分割数据训练与测试。以 60:40 的比例分割数据获得了最佳结果。最佳模型用于预测无标签数据。预测产生了 12,844 条正面情感评论数据、112 条负面情感评论数据和 70 条中性情感评论数据。这项研究的结果继续使用潜在德里希勒分配(LDA)进行主题建模,生成了客户对销售产品满意度的趋势主题。讨论每个趋势主题的意义可作为改进产品和服务的参考,尤其是在与客户沟通时。
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发文量
47
审稿时长
6 weeks
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