# Predicting individual food valuation via vision-language embedding model

**Authors:** Hiroki Kojima, Asako Toyama, Shinsuke Suzuki, Yuichi Yamashita

PMC · DOI: 10.1371/journal.pdig.0001044 · PLOS Digital Health · 2025-10-28

## TL;DR

Researchers used a vision-language model to predict individual food preferences and found distinct patterns linked to eating behaviors and mental health traits.

## Contribution

A novel method using CLIP embeddings to predict food preferences and characterize individual traits based on visual and semantic features.

## Key findings

- CLIP embeddings outperformed pixel-based and text-based methods in predicting food preferences.
- Picky eaters showed systematic avoidance of healthy foods in their preference patterns.
- Individuals with higher mental health symptoms had less consistent food preference patterns.

## Abstract

Food preferences differ among individuals, and these variations reflect underlying personalities or mental tendencies. However, capturing and predicting these individual differences remains challenging. Here, we propose a novel method to predict individual food preferences by using CLIP (Contrastive Language-Image Pre-Training), which can capture both visual and semantic features of food images. By applying this method to food image rating data obtained from human subjects, we demonstrated our method’s prediction capability, which achieved better scores compared to methods using pixel-based embeddings or label text-based embeddings. Our method can also be used to characterize individual traits as characteristic vectors in the embedding space. By analyzing these individual trait vectors, we captured the tendency of the trait vectors of the high picky-eater group. In contrast, the group with relatively high levels of general psychopathology did not show any bias in the distribution of trait vectors, but their preferences were significantly less well-represented by a single trait vector for each individual. Our results demonstrate that CLIP embeddings, which integrate both visual and semantic features, not only effectively predict food image preferences but also provide valuable representations of individual trait characteristics, suggesting potential applications for understanding and addressing food preference patterns in both research and clinical contexts.

Food preferences vary greatly among individuals and can provide insights into personality traits and mental health patterns. Traditional approaches to understanding these preferences have been limited by their inability to capture the complex interplay between what we see and what we know about food. In this study, we developed a new computational method using CLIP (Contrastive Language-Image Pre-Training), an artificial intelligence model that can analyze both visual features and semantic meaning simultaneously. We tested our approach on food rating data from 199 participants who evaluated 896 food images. Our method successfully predicted individual food preferences and revealed distinct patterns in people with different eating behaviors and mental health characteristics. Notably, individuals with picky eating tendencies showed preference patterns that systematically avoided healthy foods, while those with higher mental health symptom scores had less consistent preference patterns overall. These findings demonstrate that combining visual and semantic information provides a powerful tool for understanding food preferences, with potential applications in personalized nutrition, clinical assessment, and treatment of eating disorders.

## Full-text entities

- **Species:** Homo sapiens (human, species) [taxon 9606]

## Full text

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## Figures

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## References

51 references — full list in the complete paper: https://tomesphere.com/paper/PMC12561901/full.md

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Source: https://tomesphere.com/paper/PMC12561901