Disentangling consumer recommendations: Explaining and predicting airline recommendations based on online reviews

作者:

Highlights:

• Importance of inferring recommendationsin online reviews in tourism services.

• A systematic methodology toextract service aspects and aspect-oriented sentiment.

• Explanation of servicerecommendations based on core and augmented service aspects.

• Prediction of the recommendationdecision by means of machine learning techniques.

• Analyze the role of servicebusiness models – low cost vs full service airlines.

摘要

Consumer recommendations of products and services are important performance indicators for organizations to gain feedback on their offerings. Furthermore, they are important for prospective customers to learn from prior consumer experiences. In this study, we focus on user-generated content, in particular online reviews, to investigate which service aspects are evaluated by consumers and how these factors explain a consumer's recommendation. Further, we investigate how recommendations can be predicted automatically based on such user-driven responses. We disentangle the recommendation decision by performing explanatory and predictive analyses focusing on a sample of airline reviews. We identify core and augmented service aspects expressed in the online review. We then show that service aspect-specific sentiment indicators drive the decision to recommend an airline and that these factors can be incorporated in a predictive model using data mining techniques. We also find that the business model of an airline being reviewed, whether low cost or full service, is also an applicable consideration. Our results are highly relevant for practitioners to analyze and act on consumer feedback in a prompt manner, along with the ability of gaining a deeper understanding of the service from multiple aspects. Also, potential travelers can benefit from this approach by getting an aggregated view on service quality.

论文关键词:Consumer recommendation,Promoter score,Online review,Sentiment analysis,Data mining

论文评审过程:Received 12 June 2017, Revised 7 November 2017, Accepted 6 January 2018, Available online 11 January 2018, Version of Record 6 March 2018.

论文官网地址:https://doi.org/10.1016/j.dss.2018.01.002