Discovering Airline-Specific Business Intelligence from Online Passenger Reviews: An Unsupervised Text Analytics Approach
Sharan Srinivas, Surya Ramachandiran

TL;DR
This paper presents an unsupervised text analytics framework that extracts airline-specific service quality insights from online passenger reviews, combining multiple topic and sentiment models to generate actionable intelligence.
Contribution
It introduces an ensemble-assisted topic model and sentiment analyzer to improve aspect and sentiment classification in airline reviews, enabling detailed competitive analysis.
Findings
Effective identification of key service aspects from reviews
Accurate sentiment classification using ensemble methods
Case study demonstrates cost-effective airline performance insights
Abstract
To understand the important dimensions of service quality from the passenger's perspective and tailor service offerings for competitive advantage, airlines can capitalize on the abundantly available online customer reviews (OCR). The objective of this paper is to discover company- and competitor-specific intelligence from OCR using an unsupervised text analytics approach. First, the key aspects (or topics) discussed in the OCR are extracted using three topic models - probabilistic latent semantic analysis (pLSA) and two variants of Latent Dirichlet allocation (LDA-VI and LDA-GS). Subsequently, we propose an ensemble-assisted topic model (EA-TM), which integrates the individual topic models, to classify each review sentence to the most representative aspect. Likewise, to determine the sentiment corresponding to a review sentence, an ensemble sentiment analyzer (E-SA), which combines the…
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Taxonomy
TopicsDigital Marketing and Social Media · Aviation Industry Analysis and Trends · Sentiment Analysis and Opinion Mining
