Decoding Wine Narratives with Hierarchical Attention: Classification, Visual Prompts, and Emerging E-Commerce Possibilities

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Publicado en:Journal of Theoretical and Applied Electronic Commerce Research vol. 20, no. 3 (2025), p. 212-251
Autor principal: Diaconita Vlad
Otros Autores: Belciu Anda, Corbea Alexandra Maria Ioana, Simonca Iuliana
Publicado:
MDPI AG
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Acceso en línea:Citation/Abstract
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Resumen:Wine reviews can connect words to flavours; they entwine sensory experiences into vivid stories. This research explores the intersection of artificial intelligence and oenology by using state-of-the-art neural networks to decipher the nuances in wine reviews. For more accurate wine classification and to capture the essence of what matters most to aficionados, we use Hierarchical Attention Networks enhanced with pre-trained embeddings. We also propose an approach to create captivating marketing images using advanced text-to-image generation models, mining a large review corpus for the most important descriptive terms and thus linking textual tasting notes to automatically generated imagery. Compared to more conventional models, our results show that hierarchical attention processes fused with rich linguistic embeddings better reflect the complexities of wine language. In addition to improving the accuracy of wine classification, this method provides consumers with immersive experiences by turning sensory descriptors into striking visual stories. Ultimately, our research helps modernise wine marketing and consumer engagement by merging deep learning with sensory analytics, proving how technology-driven solutions can amplify storytelling and shopping experiences in the digital marketplace.
ISSN:0718-1876
DOI:10.3390/jtaer20030212
Fuente:ABI/INFORM Global