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Learning to Taste: A Multimodal Wine Dataset

A large multimodal wine dataset, WineSensed, improves the representation of flavor through a low-dimensional concept embedding algorithm combining human and machine similarity measures.

Year
2023
Venue
learning-to-taste-a-multimodal-wine-dataset
Authors
8
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arxiv.org/abs/2308.16900v4ARXIV-DEFAULT
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Abstract

We present WineSensed, a large multimodal wine dataset for studying the relations between visual perception, language, and flavor. The dataset encompasses 897k images of wine labels and 824k reviews of wines curated from the Vivino platform. It has over 350k unique bottlings, annotated with year, region, rating, alcohol percentage, price, and grape composition. We obtained fine-grained flavor annotations on a subset by conducting a wine-tasting experiment with 256 participants who were asked to rank wines based on their similarity in flavor, resulting in more than 5k pairwise flavor distances. We propose a low-dimensional concept embedding algorithm that combines human experience with automatic machine similarity kernels. We demonstrate that this shared concept embedding space improves upon separate embedding spaces for coarse flavor classification (alcohol percentage, country, grape, price, rating) and aligns with the intricate human perception of flavor.

Authors

8