2023
DOI: 10.3390/foods12183386
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A Comprehensive Comparative Analysis of Deep Learning Based Feature Representations for Molecular Taste Prediction

Yu Song,
Sihao Chang,
Jing Tian
et al.

Abstract: Taste determination in small molecules is critical in food chemistry but traditional experimental methods can be time-consuming. Consequently, computational techniques have emerged as valuable tools for this task. In this study, we explore taste prediction using various molecular feature representations and assess the performance of different machine learning algorithms on a dataset comprising 2601 molecules. The results reveal that GNN-based models outperform other approaches in taste prediction. Moreover, co… Show more

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