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Unveiling Dual Quality in Product Reviews: An NLP-Based Approach

25 May 2025
Rafał Poświata
Marcin Michał Mirończuk
Sławomir Dadas
Małgorzata Grębowiec
Michał Perełkiewicz
    AAML
ArXiv (abs)PDFHTML
Main:7 Pages
9 Figures
Bibliography:4 Pages
12 Tables
Appendix:7 Pages
Abstract

Consumers often face inconsistent product quality, particularly when identical products vary between markets, a situation known as the dual quality problem. To identify and address this issue, automated techniques are needed. This paper explores how natural language processing (NLP) can aid in detecting such discrepancies and presents the full process of developing a solution. First, we describe in detail the creation of a new Polish-language dataset with 1,957 reviews, 540 highlighting dual quality issues. We then discuss experiments with various approaches like SetFit with sentence-transformers, transformer-based encoders, and LLMs, including error analysis and robustness verification. Additionally, we evaluate multilingual transfer using a subset of opinions in English, French, and German. The paper concludes with insights on deployment and practical applications.

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@article{poświata2025_2505.19254,
  title={ Unveiling Dual Quality in Product Reviews: An NLP-Based Approach },
  author={ Rafał Poświata and Marcin Michał Mirończuk and Sławomir Dadas and Małgorzata Grębowiec and Michał Perełkiewicz },
  journal={arXiv preprint arXiv:2505.19254},
  year={ 2025 }
}
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