Shambhavi Tannir, Yuning Pan, Nathaniel Josephs, Christopher Cunningham, Nathan R Hendrick, Annie Beckett, James McNeely, Aaron Beeler, Malika Jeffries-El, Eric D Kolaczyk
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引用次数: 0
摘要
我们展示了梯度增强集合模型的使用,它能准确预测基于苯并双[1,2-d:4,5-d']恶唑(BBO)的荧光发射体的发射波长。我们利用密度泛函理论(DFT)计算出的基态和激发态特征,从 Jeffries-EL 小组以前发表的数据中整理出了一个包含 50 个分子的数据库。我们考虑了基于 (i) 整个十字形分子和 (ii) 其组成片段分子的两种机器学习 (ML) 模型。这两种 ML 模型都能提供精确的预测,均方根误差在 30 到 36 nm 之间,与在更多数量级的分子上训练出来的最先进的深度学习模型相比具有竞争力。我们还提供了可解释的特征重要性分析,并讨论了 DFT 与预测发射波长变化之间的相关关系。
Predicting Emission Wavelengths in Benzobisoxazole-Based OLEDs with Gradient Boosted Ensemble Models.
We demonstrate the use of gradient-boosted ensemble models that accurately predict emission wavelengths in benzobis[1,2-d:4,5-d']oxazole (BBO) based fluorescent emitters. We have curated a database of 50 molecules from previously published data by the Jeffries-EL group using density functional theory (DFT) computed ground and excited state features. We consider two machine learning (ML) models based on (i) whole cruciform molecules and (ii) their constituent fragment molecules. Both ML models provide accurate predictions with root-mean-square errors between 30 and 36 nm, competitive with state-of-the-art deep learning models trained on orders of magnitude more molecules, and this accuracy holds even when tested on four new BBO emitters unseen by the models. We also provide an interpretable feature importance analysis and discuss the relevant relationships between DFT and changes in predicted emission wavelength.
期刊介绍:
The Journal of Physical Chemistry A is devoted to reporting new and original experimental and theoretical basic research of interest to physical chemists, biophysical chemists, and chemical physicists.