Predictions of nuclear properties far from measured data are inherently imprecise because of uncertainties in our knowledge of nuclear forces and in our treatment of quantum many-body effects in strongly-interacting systems. While the model bias can be directly calculated when experimental data is available, only an estimate can be made in the absence of such measurements. Current approaches to compute the estimated bias quickly lose predictive power when input variables such as proton or neutron number are extrapolated, resulting in uncontrolled uncertainties in applications such as nucleosynthesis simulations. In this letter, we present a novel technique to identify the input variables of machine learning algorithms that can provide robus...
The nuclear matter parameters (NMPs), those underlie in the construction of the equation of state (E...
To achieve its design goals, the next generation of neutrino-oscillation accelerator experiments req...
Characteristics of the spent nuclear fuel (SNF) are typically calculated, requiring validation a pri...
Ab-initio calculations of nuclear masses, the binding energy and the $\alpha$ decay half-lives are i...
Machine learning methods and uncertainty quantification have been gaining interest throughout the la...
After more than 80 years from the seminal work of Weizsäcker and the liquid drop model of the atomic...
Background: The limits of the nuclear landscape are determined by nuclear binding energies. Beyond t...
Advances in machine learning methods provide tools that have broad applicability in scientific resea...
Many analyses in particle and nuclear physics use simulations to infer fundamental, effective, or ph...
The framework of nuclear energy density functionals has been employed to describe nuclear structure ...
From the lightest Hydrogen isotopes up to the recently synthesized Oganesson (Z = 118), it is estima...
Background: The chart of the nuclides is limited by particle drip lines beyond which nuclear stabili...
Over the past decade, machine learning has been successfully applied in various fields of science. I...
Predicting the structure of quantum many-body systems from the first principles of quantum mechanics...
We construct efficient emulators for the \emph{ab initio} computation of the infinite nuclear matter...
The nuclear matter parameters (NMPs), those underlie in the construction of the equation of state (E...
To achieve its design goals, the next generation of neutrino-oscillation accelerator experiments req...
Characteristics of the spent nuclear fuel (SNF) are typically calculated, requiring validation a pri...
Ab-initio calculations of nuclear masses, the binding energy and the $\alpha$ decay half-lives are i...
Machine learning methods and uncertainty quantification have been gaining interest throughout the la...
After more than 80 years from the seminal work of Weizsäcker and the liquid drop model of the atomic...
Background: The limits of the nuclear landscape are determined by nuclear binding energies. Beyond t...
Advances in machine learning methods provide tools that have broad applicability in scientific resea...
Many analyses in particle and nuclear physics use simulations to infer fundamental, effective, or ph...
The framework of nuclear energy density functionals has been employed to describe nuclear structure ...
From the lightest Hydrogen isotopes up to the recently synthesized Oganesson (Z = 118), it is estima...
Background: The chart of the nuclides is limited by particle drip lines beyond which nuclear stabili...
Over the past decade, machine learning has been successfully applied in various fields of science. I...
Predicting the structure of quantum many-body systems from the first principles of quantum mechanics...
We construct efficient emulators for the \emph{ab initio} computation of the infinite nuclear matter...
The nuclear matter parameters (NMPs), those underlie in the construction of the equation of state (E...
To achieve its design goals, the next generation of neutrino-oscillation accelerator experiments req...
Characteristics of the spent nuclear fuel (SNF) are typically calculated, requiring validation a pri...