The rapidly improving performance of inelastic scattering instruments has prompted tremendous advances in our knowledge of the high-frequency dynamics of disordered systems, yet also imposing new demands to the data analysis and interpretation. This ongoing effort is likely to reach soon an impasse, unless new protocols are developed in the data modeling. This need stems from the increasingly detailed information sought for in typical line shape measurements, which often touches or crosses the boundaries imposed by the limited experimental accuracy. Given this scenario, the risk of a bias and an over-parametrized data modeling represents a concrete threat for further advances in the field. Being aware of the severity of the problem...
International audienceThe nuclear matter parameters (NMPs), those underlie in the construction of th...
This paper describes a new machine-learning application to speed up Small-angle neutron scattering (...
Bayesian methods offer a coherent and efficient framework for implementing uncertainties into induct...
The rapidly improving performance of inelastic scattering instruments has prompted tremendous advan...
The rapidly improving performance of inelastic scattering instruments has prompted tremendous advanc...
When the dynamics of liquids and disordered systems at mesoscopic level is investigated by means of ...
Nowadays, an increasing number of scattering measurements rely on the use of large-scale research f...
Abstract. The evaluation of neutron cross sections as a function of energy is fraught with inconsist...
Our understanding of physical systems often depends on our ability to match complex computational mo...
This article describes basic concepts of statistical estimation based on experimental data, includin...
. In the preceding paper, Bayesian analysis was applied to the parameter estimation problem, given q...
International audienceSmall-angle X-ray scattering (SAXS) experiments are important in structural bi...
In the last few decades, experimental studies of the terahertz spectrum of density fluctuations hav...
We review recent inelastic neutron scattering experiments aimed at investigating still open issues i...
Owing to a lack of robust principled methods, systematic instrumental uncertainties have generally b...
International audienceThe nuclear matter parameters (NMPs), those underlie in the construction of th...
This paper describes a new machine-learning application to speed up Small-angle neutron scattering (...
Bayesian methods offer a coherent and efficient framework for implementing uncertainties into induct...
The rapidly improving performance of inelastic scattering instruments has prompted tremendous advan...
The rapidly improving performance of inelastic scattering instruments has prompted tremendous advanc...
When the dynamics of liquids and disordered systems at mesoscopic level is investigated by means of ...
Nowadays, an increasing number of scattering measurements rely on the use of large-scale research f...
Abstract. The evaluation of neutron cross sections as a function of energy is fraught with inconsist...
Our understanding of physical systems often depends on our ability to match complex computational mo...
This article describes basic concepts of statistical estimation based on experimental data, includin...
. In the preceding paper, Bayesian analysis was applied to the parameter estimation problem, given q...
International audienceSmall-angle X-ray scattering (SAXS) experiments are important in structural bi...
In the last few decades, experimental studies of the terahertz spectrum of density fluctuations hav...
We review recent inelastic neutron scattering experiments aimed at investigating still open issues i...
Owing to a lack of robust principled methods, systematic instrumental uncertainties have generally b...
International audienceThe nuclear matter parameters (NMPs), those underlie in the construction of th...
This paper describes a new machine-learning application to speed up Small-angle neutron scattering (...
Bayesian methods offer a coherent and efficient framework for implementing uncertainties into induct...