基于LDA的P2P住宿客户满意度维度分析——以Airbnb为例

Kevin Situmorang, A. Hidayanto, A. Wicaksono, A. Yuliawati
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引用次数: 2

摘要

顾客满意度成为影响人们习惯或日常活动的关键因素。其中一个例子是在决策过程中,他们是否会使用特定的产品或服务。人们经常需要别人对他们将要使用或消费的东西进行评论或评级。在本研究中,通过使用Airbnb网站上的客户在线评论,我们试图提取关于点对点住宿最常被谈论的因素,以及客户对这些因素的看法。我们使用潜在狄利克雷分配(Latent Dirichlet Allocation, LDA)来提取这些因素,并利用谷歌Cloud NLP的语义分析器进行情感分析。我们分析了哪些因素对顾客满意度的影响更大,不仅是一般的,而且更具体地基于顾客性别和旅游目的地对象。结果表明,社会效益和服务质量等相关因素对顾客满意度有影响,而且不同的顾客性别和不同的旅游对象目的地会带来不同的顾客情绪。我们还发现酒店业主可以改善的几个因素,以提高顾客对其服务的满意度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis on Customer Satisfaction Dimensions in P2P Accommodation using LDA: A Case Study of Airbnb
Customer satisfaction becomes a key influencer for people's habits or daily activities. One of the examples is in the decision-making process about whether they will use specific products or services. People often need other's review or rating about what they are going to use or consume. In this research, by using customer's online review that available from Airbnb website, we try to extract what are the most talked factors about peer-to-peer accommodation, and how customer sentiment about them. We use Latent Dirichlet Allocation (LDA) to extract that factors and conduct sentiment analysis by utilizing semantic analyzer from Google Cloud NLP. We analyze which factors that has more effect on customer satisfaction, not only in general but more specific based on customer gender and tourism destination object. The result shows that factors related to social benefit and service quality have impact on customer satisfaction, moreover different customer gender and different tourism object destination bring different sentiment among customer. We also find several factors that can be improved by the owner of the accommodation to improve customer satisfaction toward their services.
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