A study on text-score disagreement in online reviews
Michela Fazzolari, Vittoria Cozza, Marinella Petrocchi and, Angelo Spognardi

TL;DR
This paper investigates the relationship between textual sentiment and numerical scores in online hotel reviews, using AI techniques to detect mismatches and extract meaningful insights for consumers and providers.
Contribution
It introduces a method to identify polarity mismatches in hotel reviews and demonstrates its effectiveness on large datasets, aiding better understanding of review content and scores.
Findings
Middle-rated reviews often contain mixed positive and negative aspects.
Polarity mismatch detection can highlight reviews that reveal specific satisfaction factors.
The approach helps focus on reviews with conflicting sentiment and scores for better insights.
Abstract
In this paper, we focus on online reviews and employ artificial intelligence tools, taken from the cognitive computing field, to help understanding the relationships between the textual part of the review and the assigned numerical score. We move from the intuitions that 1) a set of textual reviews expressing different sentiments may feature the same score (and vice-versa); and 2) detecting and analyzing the mismatches between the review content and the actual score may benefit both service providers and consumers, by highlighting specific factors of satisfaction (and dissatisfaction) in texts. To prove the intuitions, we adopt sentiment analysis techniques and we concentrate on hotel reviews, to find polarity mismatches therein. In particular, we first train a text classifier with a set of annotated hotel reviews, taken from the Booking website. Then, we analyze a large dataset, with…
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