Machine learning modeling of the absorption properties of azobenzene molecules

Valentin Stanev , Ryota Maehashi , Yoshimi Ohta , Ichiro Takeuchi
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Abstract

We present a machine learning framework for modeling the absorption properties of azobenzene molecules – an important class of organic compounds with many potential photochemical applications. The framework utilizes predictors based on the chemical composition and structure of each molecule and consists of separate regression models trained to predict the absorption at distinct wavelengths, covering the UV and visible light ranges. Despite the relatively small size of the dataset (330 molecule-absorption spectrum pairs), the models were able to learn to accurately predict the absorption at fixed wavelengths, as well as the position and intensity of the maximum absorption. These predictions can be used to rapidly screen thousands of candidate molecules for a variety of potential applications, reducing the need for time-consuming and expensive experiments or first-principles computations.

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偶氮苯分子吸收特性的机器学习建模
我们提出了一个机器学习框架来模拟偶氮苯分子的吸收特性,偶氮苯是一类重要的有机化合物,具有许多潜在的光化学应用。该框架利用了基于每个分子的化学组成和结构的预测因子,并由单独的回归模型组成,这些模型经过训练,可以预测不同波长的吸收,覆盖紫外线和可见光范围。尽管数据集的大小相对较小(330个分子吸收光谱对),但模型能够学习准确预测固定波长下的吸收,以及最大吸收的位置和强度。这些预测可以用于快速筛选数千个候选分子,用于各种潜在的应用,减少了耗时和昂贵的实验或第一性原理计算的需要。
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Artificial intelligence chemistry
Artificial intelligence chemistry Chemistry (General)
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审稿时长
21 days
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