4.4 Article

Understanding Airline Passengers during Covid-19 Outbreak to Improve Service Quality: Topic Modeling Approach to Complaints with Latent Dirichlet Allocation Algorithm

Journal

TRANSPORTATION RESEARCH RECORD
Volume 2677, Issue 4, Pages 656-673

Publisher

SAGE PUBLICATIONS INC
DOI: 10.1177/03611981221112096

Keywords

decision support system; airline industry; low-cost carrier; full-service carrier; customer complaints; text mining; latent dirichlet allocation algorithm

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The COVID-19 pandemic has had a significant impact on the airline industry, resulting in operational challenges and increased customer complaints. This study utilizes complaint data to categorize and identify major service failures, providing valuable insights for airlines.
The COVID-19 pandemic has deeply affected the airline industry, as it has many sectors, and has created tremendous financial pressure on companies. Flight bans, new regulations, and restrictions increase consumer complaints and are emerging as a big problem for airline companies. Understanding the main reasons triggering complaints and eliminating service failures in the airline industry will be a vital strategic priority for businesses, while reviewing the dimensions of service quality during the COVID-19 pandemic provides an excellent opportunity for academic literature. In this study, 10,594 complaints against two major airlines that offer full-service and low-cost options were analyzed with the Latent Dirichlet Allocation algorithm to categorize them by essential topics. Results provide valuable information for both. Furthermore, this study fills the gap in the existing literature by proposing a decision support system to identify significant service failures through passenger complaints in the airline industry utilizing e-complaints during an unusual situation such as the COVID-19 pandemic.

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