Evaluating Customer Perspectives on Sustainability Advertising in the Fashion Retail Sector Using Machine Learning
Luca Rossi (),
Maria Giovina Pasca (),
Gabriella Arcese () and
Dario Barberini ()
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Luca Rossi: Niccolò Cusano University, Department of Economic, Psychological, Communication, Education and Motor Sciences
Maria Giovina Pasca: Niccolò Cusano University, Department of Economic, Psychological, Communication, Education and Motor Sciences
Gabriella Arcese: Niccolò Cusano University, Department of Economic, Psychological, Communication, Education and Motor Sciences
Dario Barberini: Niccolò Cusano University, Department of Economic, Psychological, Communication, Education and Motor Sciences
Chapter Chapter 24 in Human Resource Development for Sustainability and Social Responsibility, 2026, pp 339-352 from Springer
Abstract:
Abstract This paper explores how sustainability-themed advertising influences consumer perceptions and purchase intentions in the fashion retail sector, specifically focusing on the Italian market. Using a mixed-method approach, the study integrates quantitative survey data, biometric facial recognition, and natural language processing (NLP) to assess the impact of advertising elements such as credibility, transparency, and emotional engagement. A sample of 120 Italian consumers viewed a sustainability-oriented promotional video and responded to structured questions and open-ended prompts while being recorded via webcam. Statistical analyses, including regression and machine learning models (Lasso, Random Forest), revealed that perceived credibility (β = 0.41, p
Keywords: Sustainability advertising; Consumer behavior; Machine Learning (ML); Emotional engagement; Fashion retail sector (search for similar items in EconPapers)
Date: 2026
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Persistent link: https://EconPapers.repec.org/RePEc:spr:prbchp:978-3-032-09683-8_24
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DOI: 10.1007/978-3-032-09683-8_24
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