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Mining Customer Opinion for Topic Modeling Purpose: Case Study of Ride-Hailing Service Provider

机译:挖掘客户意见以进行主题建模:乘车服务提供商的案例研究

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摘要

The popularity of ride-hailing services in the form of smartphone application as a transportation solution has become center of attention. The convenience offered has made many people use it in daily life and discuss it on social media. As a result, ride-hailing service providers utilize social media for capturing customers' opinions and marketing their services. If customers' statements about ride-hailing services are analyzed further, service providers can get insight for evaluating their services to meet customers' satisfaction. Text mining approach can be useful to analyze large number of posts and various writing styles to extract hidden information. Furthermore, by applying topic modeling, service providers can identify the important points that were spoken by customers without previously giving label or category to the text. Latent Dirichlet Allocation was used in this study to extract topics based on the posts from ride-hailing customers published on Twitter. This study used 40 parameter combinations for LDA to get the best one to obtain the topics. Based on the perplexity value, there were 9 topics discussed by customers in their posts including the top words in each topic. The output of this study can be used for the service providers to evaluate and improve the services.
机译:作为交通解决方案的智能手机应用程序形式的乘车服务的普及已成为关注的焦点。所提供的便利已使许多人在日常生活中使用它并在社交媒体上进行讨论。结果,打车服务提供商利用社交媒体来捕获客户的意见并营销他们的服务。如果进一步分析客户关于乘车服务的陈述,则服务提供商可以洞悉评估其服务的满意度,从而满足客户的需求。文本挖掘方法可用于分析大量帖子和各种写作风格以提取隐藏信息。此外,通过应用主题建模,服务提供商可以识别客户所说的重点,而无需事先为文本提供标签或类别。在这项研究中,使用了潜在的Dirichlet分配来提取主题,这些主题基于Twitter上打车服务客户发布的帖子。这项研究对LDA使用了40个参数组合,以获得获得主题的最佳组合。根据困惑值,客户在其帖子中讨论了9个主题,包括每个主题的关键词。该研究的结果可用于服务提供商评估和改善服务。

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