Olfactory Label Prediction on Aroma-Chemical Pairs
- URL: http://arxiv.org/abs/2312.16124v2
- Date: Wed, 5 Jun 2024 13:26:48 GMT
- Title: Olfactory Label Prediction on Aroma-Chemical Pairs
- Authors: Laura Sisson, Aryan Amit Barsainyan, Mrityunjay Sharma, Ritesh Kumar,
- Abstract summary: We present graph neural network models capable of accurately predicting the odor qualities arising from blends of aroma-chemicals.
In this paper, we apply both existing and novel approaches to a dataset we gathered consisting of labeled pairs of molecules.
- Score: 0.2749898166276853
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The application of deep learning techniques on aroma-chemicals has resulted in models more accurate than human experts at predicting olfactory qualities. However, public research in this domain has been limited to predicting the qualities of single molecules, whereas in industry applications, perfumers and food scientists are often concerned with blends of many molecules. In this paper, we apply both existing and novel approaches to a dataset we gathered consisting of labeled pairs of molecules. We present graph neural network models capable of accurately predicting the odor qualities arising from blends of aroma-chemicals, with an analysis of how variations in architecture can lead to significant differences in predictive power.
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