Ding Kai, Choo Wei Chong, Ng Keng Yap, Ng Siew Imm, Song Pu
Department of Management and Marketing, Faculty of Economics and Management, Universiti Putra Malaysia, Seri Kembangan, Malaysia.
Department of Software Engineering and Information System, Faculty of Computer Science and Information Technology, Universiti Putra Malaysia, Seri Kembangan, Malaysia.
Front Psychol. 2021 Apr 21;12:659481. doi: 10.3389/fpsyg.2021.659481. eCollection 2021.
This study aims to examine key attributes affecting Airbnb users' satisfaction and dissatisfaction through the analysis of online reviews. A corpus that comprises 59,766 Airbnb reviews form 27,980 listings located in 12 different cities is analyzed by using both Latent Dirichlet Allocation (LDA) and supervised LDA (sLDA) approach. Unlike previous LDA based Airbnb studies, this study examines positive and negative Airbnb reviews separately, and results reveal the heterogeneity of satisfaction and dissatisfaction attributes in Airbnb accommodation. In particular, the emergence of the topic "guest conflicts" in this study leads to a new direction in future sharing economy accommodation research, which is to study the interactions of different guests in a highly shared environment. The results of topic distribution analysis show that in different types of Airbnb properties, Airbnb users attach different importance to the same service attributes. The topic correlation analysis reveals that home like experience and help from the host are associated with Airbnb users' revisit intention. We determine attributes that have the strongest predictive power to Airbnb users' satisfaction and dissatisfaction through the sLDA analysis, which provides valuable managerial insights into priority setting when developing strategies to increase Airbnb users' satisfaction. Methodologically, this study contributes by illustrating how to employ novel approaches to transform social media data into useful knowledge about customer satisfaction, and the findings can provide valuable managerial implications for Airbnb practitioners.
本研究旨在通过对在线评论的分析,考察影响爱彼迎(Airbnb)用户满意度和不满的关键属性。使用潜在狄利克雷分配(LDA)和监督潜在狄利克雷分配(sLDA)方法,对一个语料库进行了分析,该语料库包含来自12个不同城市的27,980个房源的59,766条爱彼迎评论。与以往基于LDA的爱彼迎研究不同,本研究分别考察了爱彼迎的正面和负面评论,结果揭示了爱彼迎住宿中满意度和不满属性的异质性。特别是,本研究中“客人冲突”这一主题的出现,为未来共享经济住宿研究指明了一个新方向,即研究在高度共享环境中不同客人之间的互动。主题分布分析结果表明,在不同类型的爱彼迎房源中,爱彼迎用户对相同服务属性的重视程度不同。主题相关性分析表明,像家一样的体验和房东的帮助与爱彼迎用户的再次入住意愿相关。我们通过sLDA分析确定了对爱彼迎用户满意度和不满具有最强预测力的属性,这为制定提高爱彼迎用户满意度的策略时的优先级设定提供了有价值的管理见解。在方法上,本研究通过说明如何采用新颖方法将社交媒体数据转化为有关客户满意度的有用知识做出了贡献,研究结果可为爱彼迎从业者提供有价值的管理启示。