Article

Estimation of cosmological parameters using adaptive importance sampling

DOI:http://hal.archives-ouvertes.fr/hal-00365944/en/
Source: OAI

ABSTRACT Article 023507 We present a Bayesian sampling algorithm called adaptive importance sampling or Population Monte Carlo (PMC), whose computational workload is easily parallelizable and thus has the potential to considerably reduce the wall-clock time required for sampling, along with providing other benefits. To assess the performance of the approach for cosmological problems, we use simulated and actual data consisting of CMB anisotropies, supernovae of type Ia, and weak cosmological lensing, and provide a comparison of results to those obtained using state-of-the-art Markov Chain Monte Carlo (MCMC). For both types of data sets, we find comparable parameter estimates for PMC and MCMC, with the advantage of a significantly lower computational time for PMC. In the case of WMAP5 data, for example, the wall-clock time reduces from several days for MCMC to a few hours using PMC on a cluster of processors. Other benefits of the PMC approach, along with potential difficulties in using the approach, are analysed and discussed. oui

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Keywords

adaptive importance sampling
 
analysed
 
Bayesian sampling algorithm
 
benefits
 
CMB anisotropies
 
comparable parameter estimates
 
computational workload
 
cosmological problems
 
data sets
 
lower computational time
 
MCMC
 
PMC
 
PMC approach
 
Population Monte Carlo
 
potential difficulties
 
state-of-the-art Markov Chain Monte Carlo
 
type Ia
 
wall-clock time
 
weak cosmological lensing
 

Christian Robert