A Bayesian model selection analysis of WMAP3
摘要
We present a Bayesian model selection analysis of WMAP3 data using our code CosmoNest. We focus on the density perturbation spectral index and the tensor-to-scalar ratio , which define the plane of slow-roll inflationary models. We find that while the Bayesian evidence supports the conclusion that , the data are not yet powerful enough to do so at a strong or decisive level. If tensors are assumed absent, the current odds are approximately 8 to 1 in favour of under our assumptions, when WMAP3 data is used together with external data sets. WMAP3 data on its own is unable to distinguish between the two models. Further, inclusion of as a parameter weakens the conclusion against the Harrison-Zel'dovich case (n_S = 1, r=0), albeit in a prior-dependent way. In appendices we describe the CosmoNest code in detail, noting its ability to supply posterior samples as well as to accurately compute the Bayesian evidence. We make a first public release of CosmoNest, now available at http://www.cosmonest.org.
引用
@article{arxiv.astro-ph/0605003,
title = {A Bayesian model selection analysis of WMAP3},
author = {David Parkinson and Pia Mukherjee and Andrew R Liddle},
journal= {arXiv preprint arXiv:astro-ph/0605003},
year = {2008}
}
备注
7 pages RevTex with 4 figures included. Updated to match PRD accepted version. Main results unchanged. CosmoNest code now version 1.0 and includes calculation of the Information. Code available at http://www.cosmonest.org