1
Accurate Molecular-Orbital-Based Machine Learning Energies via Unsupervised Clustering of Chemical Space
2
An orbital-based representation for accurate quantum machine learning.
3
Molecular Energy Learning Using Alternative Blackbox Matrix-Matrix Multiplication Algorithm for Exact Gaussian Process
4
OrbNet Denali: A machine learning potential for biological and organic chemistry with semi-empirical cost and DFT accuracy.
5
Informing geometric deep learning with electronic interactions to accelerate quantum chemistry
6
Perspective on integrating machine learning into computational chemistry and materials science.
7
Spherical Message Passing for 3D Molecular Graphs
8
Equivariant message passing for the prediction of tensorial properties and molecular spectra
9
Origins of structural and electronic transitions in disordered silicon
10
Analytical gradients for molecular-orbital-based machine learning.
11
Fast and Uncertainty-Aware Directional Message Passing for Non-Equilibrium Molecules
12
Multi-task learning for electronic structure to predict and explore molecular potential energy surfaces
13
Improved accuracy and transferability of molecular-orbital-based machine learning: Organics, transition-metal complexes, non-covalent interactions, and transition states.
14
Neural Network Potential Energy Surfaces for Small Molecules and Reactions.
15
Retrospective on a decade of machine learning for chemical discovery
16
Quantum machine learning using atom-in-molecule-based fragments selected on the fly
17
OrbNet: Deep Learning for Quantum Chemistry Using Symmetry-Adapted Atomic-Orbital Features
18
Multi-fidelity machine-learning with uncertainty quantification and Bayesian optimization for materials design: Application to ternary random alloys
19
Ground State Energy Functional with Hartree-Fock Efficiency and Chemical Accuracy.
20
Predicting molecular dipole moments by combining atomic partial charges and atomic dipoles.
21
Machine learning accurate exchange and correlation functionals of the electronic density
22
Deep-neural-network solution of the electronic Schrödinger equation
23
Regression-clustering for Improved Accuracy and Training Cost with Molecular-Orbital-Based Machine Learning
24
Concepts of Artificial Intelligence for Computer-Assisted Drug Discovery.
25
Generative Models for Automatic Chemical Design
26
Unsupervised word embeddings capture latent knowledge from materials science literature
27
Search for Catalysts by Inverse Design: Artificial Intelligence, Mountain Climbers, and Alchemists.
28
Structure prediction drives materials discovery
29
Deep learning for molecular generation and optimization - a review of the state of the art
30
PhysNet: A Neural Network for Predicting Energies, Forces, Dipole Moments, and Partial Charges.
31
Unsupervised machine learning in atomistic simulations, between predictions and understanding.
32
A Universal Density Matrix Functional from Molecular Orbital-Based Machine Learning: Transferability across Organic Molecules
33
Optimization of Molecules via Deep Reinforcement Learning
34
Accurate molecular polarizabilities with coupled cluster theory and machine learning
35
Transferable Machine-Learning Model of the Electron Density
36
Inverse molecular design using machine learning: Generative models for matter engineering
37
Operators in quantum machine learning: Response properties in chemical space.
38
Transferability in Machine Learning for Electronic Structure via the Molecular Orbital Basis.
39
Comparison of permutationally invariant polynomials, neural networks, and Gaussian approximation potentials in representing water interactions through many-body expansions.
40
Alchemical and structural distribution based representation for universal quantum machine learning.
41
Gaussian approximation potential modeling of lithium intercalation in carbon nanostructures.
42
Deep reinforcement learning for de novo drug design
43
The TensorMol-0.1 model chemistry: a neural network augmented with long-range physics
44
How Accurate Is Density Functional Theory at Predicting Dipole Moments? An Assessment Using a New Database of 200 Benchmark Values.
45
SchNet: A continuous-filter convolutional neural network for modeling quantum interactions
46
MoleculeNet: a benchmark for molecular machine learning
47
Machine learning of accurate energy-conserving molecular force fields
48
Perspective: Machine learning potentials for atomistic simulations.
49
ANI-1: an extensible neural network potential with DFT accuracy at force field computational cost
50
Quantum-chemical insights from deep tensor neural networks
51
Bypassing the Kohn-Sham equations with machine learning
52
Getting the Right Answers for the Right Reasons: Toward Predictive Molecular Simulations of Water with Many-Body Potential Energy Functions.
53
Molecular graph convolutions: moving beyond fingerprints
54
Big Data Meets Quantum Chemistry Approximations: The Δ-Machine Learning Approach.
55
Recognizing molecular patterns by machine learning: an agnostic structural definition of the hydrogen bond.
56
Quantum chemistry structures and properties of 134 kilo molecules
57
Assessment and Validation of Machine Learning Methods for Predicting Molecular Atomization Energies.
58
Machine learning of molecular electronic properties in chemical compound space
59
Fast and accurate modeling of molecular atomization energies with machine learning.
60
Scikit-learn: Machine Learning in Python
61
Computational Spectroscopy: Methods, Experiments and Applications
62
Time-dependent density-functional theory for molecules and molecular solids
63
Gaussian approximation potentials: the accuracy of quantum mechanics, without the electrons.
64
Beyond Point Charges: Dynamic Polarization from Neural Net Predicted Multipole Moments.
65
Alchemical Variations of Intermolecular Energies According to Molecular Grand-Canonical Ensemble Density Functional Theory.
66
Variational particle number approach for rational compound design.
67
Gaussian Processes For Machine Learning
68
A fully direct RI-HF algorithm: Implementation, optimised auxiliary basis sets, demonstration of accuracy and efficiency
69
Low-order scaling local electron correlation methods. III. Linear scaling local perturbative triples correction (T)
70
Local treatment of electron correlation in coupled cluster theory
71
Adiabatic density-functional perturbation theory.
72
Gaussian basis sets for use in correlated molecular calculations. I. The atoms boron through neon and hydrogen
73
Orbital-invariant formulation and second-order gradient evaluation in Møller-Plesset perturbation theory
74
Construction of Some Molecular Orbitals to Be Approximately Invariant for Changes from One Molecule to Another
75
Brueckner's Theory and the Method of Superposition of Configurations
76
Supplementary Materials for Machine learning unifies the modeling of materials and molecules
77
CuPy : A NumPy-Compatible Library for NVIDIA GPU Calculations
78
Local Treatment of Electron Correlation