Mapping the Cosmological Confidence Ball Surface
Abstract
We present a new technique to compute simultaneously valid confidence intervals for a set of model parameters. We apply our method to the Wilkinson Microwave Anisotropy Probe's cosmic microwave background data, exploring a seven-dimensional space (τ,ΩDE,ΩM,ωDM,ωB,fν,ns). We find two distinct regions of interest: the standard concordance model and a region with large values of ωDM, ωB, and H0. This second peak in parameter space can be rejected by applying a constraint (or a prior) on the allowable values of the Hubble constant. Our new technique uses a nonparametric fit to the data, along with a frequentist approach and a smart search algorithm to map out a statistical confidence surface. The result is a confidence "ball," a set of parameter values that contains the true value with probability at least 1 - α. Our algorithm performs a role similar to the often-used Markov Chain Monte Carlo (MCMC), which samples from the posterior probability function in order to provide Bayesian credible intervals on the parameters. While the MCMC approach samples densely around a peak in the posterior, our new technique allows cosmologists to perform efficient analyses around any regions of interest, e.g., the peak itself or, possibly more importantly, the 1 - α confidence surface.
BibTeX
@article{Bryan-2007-119729,author = {B. Bryan and J. Schneider and C. Miller and R. Nichol and C. Genovese and L. Wasserman},
title = {Mapping the Cosmological Confidence Ball Surface},
journal = {The Astrophysical Journal},
year = {2007},
month = {August},
volume = {665},
number = {1},
pages = {25 - 41},
}