Accounting for Formative and Reflective Topics in Product Review Data for Better Consumer Insights
提出一种模型,区分产品评论中反映整体评价的主题与影响整体评价的主题,应用于豪华酒店评论数据,相比标准模型能更好地拟合数据并提升消费者洞察。
Observations of product and service reviews suggest that textual product reviews may contain statements about the overall experience (“We had a great time”) or, similarly, about whether to recommend a particular product. The authors argue that such statements encapsulate an overall assessment and hence are not independently informative about, but rather reflect, overall ratings. The authors propose a model that allows for the distinction between topics that contribute to and topics that merely reflect an overall evaluation and apply the model to a dataset consisting of luxury hotel reviews. The findings show that, compared with a standard supervised latent Dirichlet allocation, the proposed model better fits the data and improves customer insights by resulting in more semantically coherent topics that point at specific aspects with positive and negative relationships to customers’ evaluation of their experience.