Majumdar Atreyee, Ramakrishnan Raghunathan
Tata Institute of Fundamental Research, Hyderabad, India.
J Comput Chem. 2025 Sep 30;46(25):e70228. doi: 10.1002/jcc.70228.
Molecules that have been suggested to violate the Hund's rule, having a first excited singlet state ( ) energetically below the triplet state ( ), are rare. Yet, they hold the promise to be efficient light emitters. Their high-throughput identification demands exceptionally accurate excited-state modeling to minimize qualitatively wrong predictions. We benchmark twelve energy gaps to find that the local-correlated versions of ADC(2) and CC2 excited state methods deliver excellent accuracy and speed for screening medium-sized molecules. Notably, we find that double-hybrid DFT approximations (e.g., B2GP-PLYP and PBE-QIDH) exhibit high mean absolute errors ( ) despite very low standard deviations ( ). Exploring their parameter space reveals that a configuration with 75% exchange and 55% correlation, which reduces the mean absolute error to below 5 meV, but with an increased variance. Using this low-bias parameterization as an internal reference, we correct the systematic error while maintaining low variance, effectively combining the strengths of both low-bias and low-variance DFT parameterizations to enhance overall accuracy. Our findings suggest that low-variance DFT methods, often overlooked due to their high bias, can serve as reliable tools for predictive modeling in first-principles molecular design. The bias-correction data-fitting procedure can be applied to any general problem where two flavors of a method, one with low bias and another with low variance, have been identified a priori.
有人提出,分子可能违反洪德规则,其第一激发单重态( )在能量上低于三重态( ),但这种分子很罕见。然而,它们有望成为高效发光体。对它们进行高通量识别需要极其精确的激发态建模,以尽量减少定性错误的预测。我们对12个能隙进行了基准测试,发现ADC(2)和CC2激发态方法的局部相关版本在筛选中等大小分子时具有出色的准确性和速度。值得注意的是,我们发现双杂化密度泛函理论近似(例如B2GP-PLYP和PBE-QIDH)尽管标准差( )非常低,但平均绝对误差( )却很高。探索它们的参数空间发现,一种具有75%交换和55%相关的构型,可将平均绝对误差降低到5 meV以下,但方差会增加。以这种低偏差参数化为内部参考,我们在保持低方差的同时校正系统误差,有效地结合了低偏差和低方差密度泛函理论参数化的优势,以提高整体准确性。我们的研究结果表明,低方差密度泛函理论方法通常因其高偏差而被忽视,但可作为第一性原理分子设计中预测建模的可靠工具。偏差校正数据拟合程序可应用于任何一般问题,前提是事先已确定了一种方法的两种类型,一种具有低偏差,另一种具有低方差。