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arxiv 2208.04223 v1 pith:ZKEKKYQL submitted 2022-08-04 cs.IR cs.LG

Beer2Vec : Extracting Flavors from Reviews for Thirst-Quenching Recommandations

classification cs.IR cs.LG
keywords beer2vecbeercraftflavorsmodelrecommendationsvectorsalcoholic
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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This paper introduces the Beer2Vec model that allows the most popular alcoholic beverage in the world to be encoded into vectors enabling flavorful recommendations. We present our algorithm using a unique dataset focused on the analysis of craft beers. We thoroughly explain how we encode the flavors and how useful, from an empirical point of view, the beer vectors are to generate meaningful recommendations. We also present three different ways to use Beer2Vec in a real-world environment to enlighten the pool of craft beer consumers. Finally, we make our model and functionalities available to everybody through a web application.

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