Symmetry considerations are at the core of the major frameworks used to provide an effective mathematical representation of atomic configurations that is then used in machine-learning models to predict the properties associated with each structure. In most cases, the models rely on a description of atom-centered environments and are suitable to learn atomic properties or global observables that can be decomposed into atomic contributions. Many quantities that are relevant for quantum mechanical calculations, however-most notably the single-particle Hamiltonian matrix when written in an atomic orbital basis-are not associated with a single center, but with two (or more) atoms in the structure. We discuss a family of structural descriptors th...
Statistical learning methods show great promise in providing an accurate prediction of materials and...
The combination of modern scientific computing with electronic structure theory can lead to an unpre...
Simultaneously accurate and efficient prediction of molecular properties throughout chemical compoun...
Data-driven schemes that associate molecular and crystal structures with their microscopic propertie...
Mapping an atomistic configuration to a symmetrized N-point correlation of a field associated with t...
This has led to a proliferation of alternative ways to convert an atomic structure into an input for...
15 pages, 9 figures; included vacancy PDOS and restricted FCC or BCC training setsInternational audi...
Many-body descriptors are widely used to represent atomic environments in the construction of machin...
We present a machine learning (ML) method for predicting electronic structure correlation energies u...
We introduce machine learning models of quantum mechanical observables of atoms in molecules. Instan...
We present a machine learning (ML) method for predicting electronic structure correlation energies u...
To understand strongly correlated systems, we must confront the many-body problem. This is practical...
A number of machine learning (ML) studies have appeared with the commonality that quantum mechanical...
The prediction of chemical properties using Machine Learning (ML) techniques calls for a set of appr...
Statistical learning algorithms are finding more and more applications in science and technology. At...
Statistical learning methods show great promise in providing an accurate prediction of materials and...
The combination of modern scientific computing with electronic structure theory can lead to an unpre...
Simultaneously accurate and efficient prediction of molecular properties throughout chemical compoun...
Data-driven schemes that associate molecular and crystal structures with their microscopic propertie...
Mapping an atomistic configuration to a symmetrized N-point correlation of a field associated with t...
This has led to a proliferation of alternative ways to convert an atomic structure into an input for...
15 pages, 9 figures; included vacancy PDOS and restricted FCC or BCC training setsInternational audi...
Many-body descriptors are widely used to represent atomic environments in the construction of machin...
We present a machine learning (ML) method for predicting electronic structure correlation energies u...
We introduce machine learning models of quantum mechanical observables of atoms in molecules. Instan...
We present a machine learning (ML) method for predicting electronic structure correlation energies u...
To understand strongly correlated systems, we must confront the many-body problem. This is practical...
A number of machine learning (ML) studies have appeared with the commonality that quantum mechanical...
The prediction of chemical properties using Machine Learning (ML) techniques calls for a set of appr...
Statistical learning algorithms are finding more and more applications in science and technology. At...
Statistical learning methods show great promise in providing an accurate prediction of materials and...
The combination of modern scientific computing with electronic structure theory can lead to an unpre...
Simultaneously accurate and efficient prediction of molecular properties throughout chemical compoun...