Data-driven schemes that associate molecular and crystal structures with their microscopic properties share the need for a concise, effective description of the arrangement of their atomic constituents. Many types of models rely on descriptions of atom-centered environments, that are associated with an atomic property or with an atomic contribution to an extensive macroscopic quantity. Frameworks in this class can be understood in terms of atom-centered density correlations (ACDC), that are used as a basis for a body-ordered, symmetry-adapted expansion of the targets. Several other schemes, that gather information on the relationship between neighboring atoms using "message-passing" ideas, cannot be directly mapped to correlations centered ...
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...
We present a machine learning (ML) method for predicting electronic structure correlation energies u...
Symmetry considerations are at the core of the major frameworks used to provide an effective mathema...
This has led to a proliferation of alternative ways to convert an atomic structure into an input for...
Automated analyses of the outcome of a simulation have been an important part of atomistic modeling ...
Mapping an atomistic configuration to a symmetrized N-point correlation of a field associated with t...
Statistical learning algorithms are finding more and more applications in science and technology. At...
Machine-learning of atomic-scale properties amounts to extracting correlations between structure, co...
Many-body descriptors are widely used to represent atomic environments in the construction of machin...
We briefly summarize the kernel regression approach, as used recently in materials modelling, to fit...
We briefly summarize the kernel regression approach, as used recently in materials modelling, to fit...
The input of almost every machine learning algorithm targeting the properties of matter at the atomi...
The first step in the construction of a regression model or a data-driven analysis, aiming to predic...
We introduce an atom-centered, symmetry-adapted framework to machine-learn the valence charge densit...
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...
We present a machine learning (ML) method for predicting electronic structure correlation energies u...
Symmetry considerations are at the core of the major frameworks used to provide an effective mathema...
This has led to a proliferation of alternative ways to convert an atomic structure into an input for...
Automated analyses of the outcome of a simulation have been an important part of atomistic modeling ...
Mapping an atomistic configuration to a symmetrized N-point correlation of a field associated with t...
Statistical learning algorithms are finding more and more applications in science and technology. At...
Machine-learning of atomic-scale properties amounts to extracting correlations between structure, co...
Many-body descriptors are widely used to represent atomic environments in the construction of machin...
We briefly summarize the kernel regression approach, as used recently in materials modelling, to fit...
We briefly summarize the kernel regression approach, as used recently in materials modelling, to fit...
The input of almost every machine learning algorithm targeting the properties of matter at the atomi...
The first step in the construction of a regression model or a data-driven analysis, aiming to predic...
We introduce an atom-centered, symmetry-adapted framework to machine-learn the valence charge densit...
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...
We present a machine learning (ML) method for predicting electronic structure correlation energies u...