基于潜在Dirichlet分配方法的社交媒体曼达利卡主题建模与情感分析

Rifqi Hammad, V. C. Hardita, Ahmad Zuli Amrullah
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引用次数: 1

摘要

信息的迅速和广泛传播目前影响到旅游部门。一个被广泛讨论的旅游区是曼达里卡环路。推特是一个提供与曼达里卡巡回赛相关评论的平台。目前,管理人员(政府或私人)没有充分利用与曼达里卡巡回赛有关的大量信息。它引起了许多与曼达里卡电路相关的话题,这些话题目前正在流行,公众对曼达里卡电路的情绪是政府或私营部门所不知道的。无知会导致决策的延迟,从而对管理者造成伤害。为解决这一问题,开展了与曼陀里卡电路相关的情感分析和主题建模研究。使用的情感分析方法是支持向量机,建模使用LDA。基于情感分析的结果,在进行预处理之前,得到1500条推文,从而得到500条推文的数据集,分为398条积极推文和102条消极推文。因此,可以得出结论,推特用户对曼达里卡电路的正面回应多于负面回应。测试结果表明,SVM算法可以很好地对曼达里卡电路的情感进行分类,对SVM算法的性能进行测量,准确率为87%,精密度为77%,召回率为84.81%,特异性为98.52%。这些结果还表明,F1分数比较了平均精度和召回率,权重为80.72%。
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Topic modeling and sentiment analysis about Mandalika on social media using the latent Dirichlet allocation method
The rapid and widespread dissemination of information currently affects the tourism sector. One tourist area that is quite widely discussed is the Mandalika Circuit. Twitter is one platform that provides comments related to the Mandalika Circuit. The amount of information related to the Mandalika Circuit is currently not being utilized properly by managers (government or private). It causes many topics related to the Mandalika Circuit that are currently trending, and public sentiment regarding the Mandalika Circuit is unknown to the government or private sector. Ignorance can result in delays in decision making which can harm the manager. To overcome this problem, research on sentiment analysis and topic modeling related to the Mandalika Circuit was carried out. The sentiment analysis method used is SVM and for modeling using LDA. Based on the results of the sentiment analysis, 1500 tweets were obtained before doing the pre-processing process, thus getting a dataset of 500 tweets divided into 398 positive and 102 negative tweets. So it can be concluded that more Twitter users give positive than negative responses to the Mandalika Circuit. The test results show that the SVM algorithm can classify sentiment toward the Mandalika Circuit well, as indicated by the measurement of the performance of the SVM algorithm, namely 87% accuracy, 77% precision, 84.81% recall, and 98.52% specificity. These results also show that the F1 Score compares the average precision and recall, which is weighted at 80.72%.
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24 weeks
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