144 research outputs found
A local bias approach to the clustering of discrete density peaks
Maxima of the linear density field form a point process that can be used to
understand the spatial distribution of virialized halos that collapsed from
initially overdense regions. However, owing to the peak constraint, clustering
statistics of discrete density peaks are difficult to evaluate. For this
reason, local bias schemes have received considerably more attention in the
literature thus far. In this paper, we show that the 2-point correlation
function of maxima of a homogeneous and isotropic Gaussian random field can be
thought of, up to second order at least, as arising from a local bias expansion
formulated in terms of rotationally invariant variables. This expansion relies
on a unique smoothing scale, which is the Lagrangian radius of dark matter
halos. The great advantage of this local bias approach is that it circumvents
the difficult computation of joint probability distributions. We demonstrate
that the bias factors associated with these rotational invariants can be
computed using a peak-background split argument, in which the background
perturbation shifts the corresponding probability distribution functions.
Consequently, the bias factors are orthogonal polynomials averaged over those
spatial locations that satisfy the peak constraint. In particular, asphericity
in the peak profile contributes to the clustering at quadratic and higher
order, with bias factors given by generalized Laguerre polynomials. We
speculate that our approach remains valid at all orders, and that it can be
extended to describe clustering statistics of any point process of a Gaussian
random field. Our results will be very useful to model the clustering of
discrete tracers with more realistic collapse prescriptions involving the tidal
shear for instance.Comment: 14 pages, 1 figure. (v2): typos fixed + references added. Accepted
for publication in PR
Primordial non-Gaussianity in the large scale structure of the Universe
Primordial non-Gaussianity is a potentially powerful discriminant of the
physical mechanisms that generated the cosmological fluctuations observed
today. Any detection of significant non-Gaussianity would thus have profound
implications for our understanding of cosmic structure formation. The large
scale mass distribution in the Universe is a sensitive probe of the nature of
initial conditions. Recent theoretical progress together with rapid
developments in observational techniques will enable us to critically confront
predictions of inflationary scenarios and set constraints as competitive as
those from the Cosmic Microwave Background. In this paper, we review past and
current efforts in the search for primordial non-Gaussianity in the large scale
structure of the Universe.Comment: 24 pages, 10 figures. To appear in the special issue "Testing the
Gaussianity and Statistical Isotropy of the Universe" of Advances in
Astronom
Joint modeling of the probability distribution and power spectrum of the Lya forest: comparison with observations at z=3
We presents results of joint modeling of the probability distribution
function (PDF) and the one-dimensional power spectrum (PS) of the Lya forest
flux decrement. The sensitivity of these statistical measures to the shape and
amplitude of the linear matter power spectrum is investigated using two
variants of the LCDM cosmology. In the first model, the linear power spectrum
has a scale-invariant spectral index, whereas in the second, it has a negative
running index (RSI). We generate mock catalogs of QSO spectra, and compare
their statistical properties to those of the observations at z=3. We perform a
joint fit of the power spectrum and PDF. A scale-invariant model with
\sigma_8=0.9 matches well the data if the mean IGM temperature is T\leq 15000K.
For higher temperature, it tends to overestimate the flux power spectrum over
scales k < 0.01s/km. The discrepancy is less severe when the PS alone is
fitted. However, models matching the PS alone do not yield a good fit to the
PDF. A joint analysis of the flux PS and PDF tightens the constraints on the
model parameters and reduces systematic biases. The RSI model is consistent
with the observed PS and PDF only if the temperature is T\geq 20000K. The best
fit models reproduce the slope and normalisation of the column density
distribution, irrespective of the shape and amplitude of the linear power
spectrum. They are also consistent with the observed line-width distribution
given the large uncertainties. Our joint analysis suggests that \sigma_8 is
likely to be in the range 0.7 - 0.9 for a temperature 10000K<T<20000K and a
reasonable reionization history.Comment: revised version. new section discussing the impact of the PDF
covariance matrix on the results. new figure comparing the constraints on
sigma_8 obtained from the PS data alone, and from the PS+PDF. other minor
changes. accepted for publication in MNRA
Signature of primordial non-Gaussianity of phi^3-type in the mass function and bias of dark matter haloes
We explore the effect of a cubic correction gnl*phi^3 on the mass function
and bias of dark matter haloes extracted from a series of large N-body
simulations and compare it to theoretical predictions. Such cubic terms can be
motivated in scenarios like the curvaton model, in which a large cubic
correction can be produced while simultaneously keeping the quadratic fnl*phi^2
correction small. The deviation from the Gaussian halo mass function is in
reasonable agreement with the theoretical predictions. The scale-dependent bias
correction Delta b_kappa(k,gnl) measured from the auto- and cross-power
spectrum of haloes, is similar to the correction in fnl models, but the
amplitude is lower than theoretical expectations. Using the compilation of LSS
data in Slosar et al. (2008), we obtain for the first time a limit on gnl of
-3.5*10^5 < gnl < +8.2*10^5 (at 95% CL). This limit will improve with the
future LSS data by 1-2 orders of magnitude, which should test many of the
scenarios of this type.Comment: 21 pages, 11 figures (v2): typo corrected, clarifications+references
added (v3): paper somewhat reorganized, added discussion on initial
conditions, version accepted by PR
Primordial non-Gaussianity from the large scale structure
Primordial non-Gaussianity is a potentially powerful discriminant of the
physical mechanisms that generated the cosmological fluctuations observed
today. Any detection of non-Gaussianity would have profound implications for
our understanding of cosmic structure formation. In this paper, we review past
and current efforts in the search for primordial non-Gaussianity in the large
scale structure of the Universe.Comment: Invited review article for the CQG special issue on nonlinear
cosmological perturbations
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