Pushing the frontiers of density functionals by solving the fractional electron problem
Density functional theory describes matter at the quantum level, but all popular
approximations suffer from systematic errors that arise from the violation of mathematical …
approximations suffer from systematic errors that arise from the violation of mathematical …
Accurate ionization potentials, electron affinities, and band gaps from the ωLH22t range-separated local hybrid functional: No tuning required
The optimal tuning (OT) of range-separated hybrid (RSH) functionals has been proposed as
the currently most accurate DFT-based way to compute the relevant quantities required for …
the currently most accurate DFT-based way to compute the relevant quantities required for …
Machine learning enables highly accurate predictions of photophysical properties of organic fluorescent materials: Emission wavelengths and quantum yields
The development of functional organic fluorescent materials calls for fast and accurate
predictions of photophysical parameters for processes such as high-throughput virtual …
predictions of photophysical parameters for processes such as high-throughput virtual …
[HTML][HTML] Improved accuracy and transferability of molecular-orbital-based machine learning: Organics, transition-metal complexes, non-covalent interactions, and …
Molecular-orbital-based machine learning (MOB-ML) provides a general framework for the
prediction of accurate correlation energies at the cost of obtaining molecular orbitals. The …
prediction of accurate correlation energies at the cost of obtaining molecular orbitals. The …
[HTML][HTML] Machine learning meets chemical physics
Over recent years, the use of statistical learning techniques applied to chemical problems
has gained substantial momentum. This is particularly apparent in the realm of physical …
has gained substantial momentum. This is particularly apparent in the realm of physical …
Stacked ensemble machine learning for range-separation parameters
Density functional theory-based high-throughput materials and drug discovery has achieved
tremendous success in recent decades, but its power on organic semiconducting molecules …
tremendous success in recent decades, but its power on organic semiconducting molecules …
Optical absorption properties of metal–organic frameworks: solid state versus molecular perspective
The vast chemical space of metal and ligand combinations in Transition Metal Complexes
(TMCs) gives rise to a rich variety of electronic excited states with local and non-local …
(TMCs) gives rise to a rich variety of electronic excited states with local and non-local …
Accurate prediction of global-density-dependent range-separation parameters based on machine learning
C Villot, T Huang, KU Lao - The Journal of Chemical Physics, 2023 - pubs.aip.org
In this work, we develop an accurate and efficient XGBoost machine learning model for
predicting the global-density-dependent range-separation parameter, ω GDD, for long …
predicting the global-density-dependent range-separation parameter, ω GDD, for long …
Insights into the deviation from piecewise linearity in transition metal complexes from supervised machine learning models
Virtual high-throughput screening (VHTS) and machine learning (ML) with density functional
theory (DFT) suffer from inaccuracies from the underlying density functional approximation …
theory (DFT) suffer from inaccuracies from the underlying density functional approximation …
Application of machine-learning algorithms to predict the transport properties of Mie fluids
The ability to predict transport properties of fluids, such as the self-diffusion coefficient and
viscosity, has been an ongoing effort in the field of molecular modeling. While there are …
viscosity, has been an ongoing effort in the field of molecular modeling. While there are …