http://hdl.handle.net/1765/1722
series: EI 2003-22

Adaptive radial-based direction sampling; Some flexible and robust Monte Carlo integration methods


Research Paper
This publication is part of collection
Related Files
asset icon
(feweco20030806161348.pdf, 0.4MB)

Adaptive radial-based direction sampling (ARDS) algorithms are specified for Bayesian analysis of models with nonelliptical, possibly, multimodal target distributions. A key step is a radial-based transformation to directions and distances. After the transformations a Metropolis-Hastings method or, alternatively, an importance sampling method is applied to evaluate generated directions. Next, distances are generated from the exact target distribution by means of the numerical inverse transformation method. An adaptive procedure is applied to update the initial location and covariance matrix in order to sample directions in an efficient way. Tested on a set of canonical mixture models that feature multimodality, strong correlation, and skewness, the ARDS algorithms compare favourably with the standard Metropolis-Hastings and importance samplers in terms of flexibility and robustness. The empirical examples include a regression model with scale contamination and a mixture model for economic growth of the USA.


The authors wishes to thank:

HCM grant ERBCHRXCT 940514 of EC


Keywords


Classifications using Journal of Economic Literature (JEL) Classification System
Automatically Extracted Terms
  • density
  • sampling
  • algorithm
  • importance
  • target
  • transformation
  • importance sampling
  • target density
  • direction
  • candidate
  • distribution
  • method
  • model
  • distance
  • drawing
  • parameter
  • sample
  • candidate density
  • integration
  • space