6533b7d0fe1ef96bd125a13b

RESEARCH PRODUCT

Word Embeddings for Wine Recommender Systems Using Vocabularies of Experts and Consumers

Christophe CruzCyril Nguyen VanLaurent Gautier

subject

Expert DiscourseOntologyRecommander systemsWord embeddingWine[SHS.LANGUE]Humanities and Social Sciences/LinguisticsTerminology[SHS.LANGUE] Humanities and Social Sciences/LinguisticsSemantics

description

International audience; This vision paper proposes an approach to use the most advanced word embeddings techniques to bridge the gap between the discourses of experts and non-experts and more specifically the terminologies used by the two communities. Word embeddings makes it possible to find equivalent terms between experts and non-experts, by approach the similarity between words or by revealing hidden semantic relations. Thus, these controlled vocabularies with these new semantic enrichments are exploited in a hybrid recommendation system incorporating content-based ontology and keyword-based ontology to obtain relevant wines recommendations regardless of the level of expertise of the end user. The major aim is to find a non-expert vocabulary from semantic rules to enrich the knowledge of the ontology and improve the indexing of the items (i.e. wine) and the recommendation process.

https://shs.hal.science/halshs-01872273