315 research outputs found
Bayesian large-scale structure inference: initial conditions and the cosmic web
We describe an innovative statistical approach for the ab initio simultaneous
analysis of the formation history and morphology of the large-scale structure
of the inhomogeneous Universe. Our algorithm explores the joint posterior
distribution of the many millions of parameters involved via efficient
Hamiltonian Markov Chain Monte Carlo sampling. We describe its application to
the Sloan Digital Sky Survey data release 7 and an additional non-linear
filtering step. We illustrate the use of our findings for cosmic web analysis:
identification of structures via tidal shear analysis and inference of dark
matter voids.Comment: 4 pages, 3 figures. Proceedings of the IAU Symposium 306 "Statistical
Challenges in 21st Century Cosmology", Lisbon, Portugal, May 25-29, 2014 (eds
A.F. Heavens, J.-L. Starck, A. Krone-Martins). Draws from arXiv:1409.6308 and
arXiv:1410.035
Efficient Wiener filtering without preconditioning
We present a new approach to calculate the Wiener filter solution of general
data sets. It is trivial to implement, flexible, numerically absolutely stable,
and guaranteed to converge. Most importantly, it does not require an ingenious
choice of preconditioner to work well. The method is capable of taking into
account inhomogeneous noise distributions and arbitrary mask geometries. It
iteratively builds up the signal reconstruction by means of a messenger field,
introduced to mediate between the different preferred bases in which signal and
noise properties can be specified most conveniently. Using cosmic microwave
background (CMB) radiation data as a showcase, we demonstrate the capabilities
of our scheme by computing Wiener filtered WMAP7 temperature and polarization
maps at full resolution for the first time. We show how the algorithm can be
modified to synthesize fluctuation maps, which, combined with the Wiener filter
solution, result in unbiased constrained signal realizations, consistent with
the observations. The algorithm performs well even on simulated CMB maps with
Planck resolution and dynamic range.Comment: 5 pages, 2 figures. Submitted to Astronomy and Astrophysics. Replaced
to match published versio
ARKCoS: Artifact-Suppressed Accelerated Radial Kernel Convolution on the Sphere
We describe a hybrid Fourier/direct space convolution algorithm for compact
radial (azimuthally symmetric) kernels on the sphere. For high resolution maps
covering a large fraction of the sky, our implementation takes advantage of the
inexpensive massive parallelism afforded by consumer graphics processing units
(GPUs). Applications involve modeling of instrumental beam shapes in terms of
compact kernels, computation of fine-scale wavelet transformations, and optimal
filtering for the detection of point sources. Our algorithm works for any
pixelization where pixels are grouped into isolatitude rings. Even for kernels
that are not bandwidth limited, ringing features are completely absent on an
ECP grid. We demonstrate that they can be highly suppressed on the popular
HEALPix pixelization, for which we develop a freely available implementation of
the algorithm. As an example application, we show that running on a high-end
consumer graphics card our method speeds up beam convolution for simulations of
a characteristic Planck high frequency instrument channel by two orders of
magnitude compared to the commonly used HEALPix implementation on one CPU core
while maintaining at typical a fractional RMS accuracy of about 1 part in 10^5.Comment: 10 pages, 6 figures. Submitted to Astronomy and Astrophysics.
Replaced to match published version. Code can be downloaded at
https://github.com/elsner/arkco
Fast calculation of the Fisher matrix for cosmic microwave background experiments
The Fisher information matrix of the cosmic microwave background (CMB)
radiation power spectrum coefficients is a fundamental quantity that specifies
the information content of a CMB experiment. In the most general case, its
exact calculation scales with the third power of the number of data points N
and is therefore computationally prohibitive for state-of-the-art surveys.
Applicable to a very large class of CMB experiments without special symmetries,
we show how to compute the Fisher matrix in only O(N^2 log N) operations as
long as the inverse noise covariance matrix can be applied to a data vector in
time O(l_max^3 log l_max). This assumption is true to a good approximation for
all CMB data sets taken so far. The method takes into account common
systematics such as arbitrary sky coverage and realistic noise correlations. As
a consequence, optimal quadratic power spectrum estimation also becomes
feasible in O(N^2 log N) operations for this large group of experiments. We
discuss the relevance of our findings to other areas of cosmology where optimal
power spectrum estimation plays a role.Comment: 4 pages, 1 figures. Accepted for publication in Astronomy and
Astrophysics Letters. Replaced to match published versio
Bayesian inference from photometric redshift surveys
We show how to enhance the redshift accuracy of surveys consisting of tracers
with highly uncertain positions along the line of sight. Photometric surveys
with redshift uncertainty delta_z ~ 0.03 can yield final redshift uncertainties
of delta_z_f ~ 0.003 in high density regions. This increased redshift precision
is achieved by imposing an isotropy and 2-point correlation prior in a Bayesian
analysis and is completely independent of the process that estimates the
photometric redshift. As a byproduct, the method also infers the three
dimensional density field, essentially super-resolving high density regions in
redshift space. Our method fully takes into account the survey mask and
selection function. It uses a simplified Poissonian picture of galaxy
formation, relating preferred locations of galaxies to regions of higher
density in the matter field. The method quantifies the remaining uncertainties
in the three dimensional density field and the true radial locations of
galaxies by generating samples that are constrained by the survey data. The
exploration of this high dimensional, non-Gaussian joint posterior is made
feasible using multiple-block Metropolis-Hastings sampling. We demonstrate the
performance of our implementation on a simulation containing 2.0 x 10^7
galaxies. These results bear out the promise of Bayesian analysis for upcoming
photometric large scale structure surveys with tens of millions of galaxies.Comment: 17 pages, 12 figure
Methods for Bayesian power spectrum inference with galaxy surveys
We derive and implement a full Bayesian large scale structure inference
method aiming at precision recovery of the cosmological power spectrum from
galaxy redshift surveys. Our approach improves over previous Bayesian methods
by performing a joint inference of the three dimensional density field, the
cosmological power spectrum, luminosity dependent galaxy biases and
corresponding normalizations. We account for all joint and correlated
uncertainties between all inferred quantities. Classes of galaxies with
different biases are treated as separate sub samples. The method therefore also
allows the combined analysis of more than one galaxy survey.
In particular, it solves the problem of inferring the power spectrum from
galaxy surveys with non-trivial survey geometries by exploring the joint
posterior distribution with efficient implementations of multiple block Markov
chain and Hybrid Monte Carlo methods. Our Markov sampler achieves high
statistical efficiency in low signal to noise regimes by using a deterministic
reversible jump algorithm. We test our method on an artificial mock galaxy
survey, emulating characteristic features of the Sloan Digital Sky Survey data
release 7, such as its survey geometry and luminosity dependent biases. These
tests demonstrate the numerical feasibility of our large scale Bayesian
inference frame work when the parameter space has millions of dimensions.
The method reveals and correctly treats the anti-correlation between bias
amplitudes and power spectrum, which are not taken into account in current
approaches to power spectrum estimation, a 20 percent effect across large
ranges in k-space. In addition, the method results in constrained realizations
of density fields obtained without assuming the power spectrum or bias
parameters in advance
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