Bayesian approach to the analysis of neutron Brillouin scattering data on liquid metals
Academic Article
Publication Date:
2016
abstract:
When the dynamics of liquids and disordered systems at mesoscopic level is investigated by means of inelastic
scattering (e.g., neutron or x ray), spectra are often characterized by a poor definition of the excitation lines and
spectroscopic features in general and one important issue is to establish howmany of these lines need to be included
in the modeling function and to estimate their parameters. Furthermore, when strongly damped excitations are
present, commonly used and widespread fitting algorithms are particularly affected by the choice of initial values
of the parameters. An inadequate choice may lead to an inefficient exploration of the parameter space, resulting
in the algorithm getting stuck in a local minimum. In this paper, we present a Bayesian approach to the analysis
of neutron Brillouin scattering data in which the number of excitation lines is treated as unknown and estimated
along with the other model parameters. We propose a joint estimation procedure based on a reversible-jump
Markov chain Monte Carlo algorithm, which efficiently explores the parameter space, producing a probabilistic
measure to quantify the uncertainty on the number of excitation lines as well as reliable parameter estimates.
The method proposed could turn out of great importance in extracting physical information from experimental
data, especially when the detection of spectral features is complicated not only because of the properties of the
sample, but also because of the limited instrumental resolution and count statistics. The approach is tested on
generated data set and then applied to real experimental spectra of neutron Brillouin scattering from a liquid
metal, previously analyzed in a more traditional way.
Iris type:
01.01 Articolo in rivista
Keywords:
reversible jump MCMC; hierarchical approach; mixture model; Brillouin neutron scattering; collective excitations; liquids
List of contributors:
GUARINI GRISALDI DEL TAJA, Eleonora; Bafile, Ubaldo; Formisano, Ferdinando; DE FRANCESCO, Alessio
Published in: