论文标题

来自偏见的示踪剂的原始非高斯:真实空间功率谱和双光谱的可能性分析

Primordial Non-Gaussianity from Biased Tracers: Likelihood Analysis of Real-Space Power Spectrum and Bispectrum

论文作者

Dizgah, Azadeh Moradinezhad, Biagetti, Matteo, Sefusatti, Emiliano, Desjacques, Vincent, Noreña, Jorge

论文摘要

即将进行的Galaxy Redshift调查有望通过测量傅立叶空间中的2个和3点相关函数来显着提高原始非高斯(PNG)的当前限制。但是,意识到该数据集的全部潜力取决于具有准确的理论模型和优化的分析方法。专注于PNG的本地模型,由$ f _ {\ rm nl} $参数化,我们执行了蒙特卡罗马尔可夫链分析,以面对振动理论的预测,对真实空间中的halo功率谱和双光谱的预测与N-Body Suite的真实空间相遇。我们在树级处对晕圈双光谱进行建模,其中包括$ f _ {\ rm nl} $的所有贡献和二次贡献,以及1循环的光晕功率谱,包括$ f _ {\ rm nl} $的p _ {\ rm nl} $ ups local pl limeal pos in in local p lins in in in in in in in in in in in in in in in in in in in in in in in in in in in in in in in in in in in inl inl inl fim f _ {\ f。保持宇宙学参数固定,我们检查了信息访问阶段对线性非高斯偏差参数对$ f _ {\ rm nl} $的统计推断的影响。合并功率谱和双光谱的保守分析,其中仅强加了松散的先验,并且所有参数被边缘化了,可以改善对$ f _ {\ rm nl} $的约束,而相对于仅功率谱的测量,则可以提高5倍以上。在$ b_ϕ $上施加强大的先验,或者假设$ b_ϕ $和$ b_ {ϕδ} $的偏见关系(以通用质量函数假设为动机),将约束进一步提高了很少的因素。但是,在这种情况下,如果使用相同范围的WaveNumber,我们发现$ f _ {\ rm nl} $的推断值的系统变化很大。同样,泊松噪声假设可以导致重要的系统学,因此至关重要的是,保持所有随机振幅不含。

Upcoming galaxy redshift surveys promise to significantly improve current limits on primordial non-Gaussianity (PNG) through measurements of 2- and 3-point correlation functions in Fourier space. However, realizing the full potential of this dataset is contingent upon having both accurate theoretical models and optimized analysis methods. Focusing on the local model of PNG, parameterized by $f_{\rm NL}$, we perform a Monte-Carlo Markov Chain analysis to confront perturbation theory predictions of the halo power spectrum and bispectrum in real space against a suite of N-body simulations. We model the halo bispectrum at tree-level, including all contributions linear and quadratic in $f_{\rm NL}$, and the halo power spectrum at 1-loop, including tree-level terms up to quadratic order in $f_{\rm NL}$ and all loops induced by local PNG linear in $f_{\rm NL}$. Keeping the cosmological parameters fixed, we examine the effect of informative priors on the linear non-Gaussian bias parameter on the statistical inference of $f_{\rm NL}$. A conservative analysisof the combined power spectrum and bispectrum, in which only loose priors are imposed and all parameters are marginalized over, can improve the constraint on $f_{\rm NL}$ by more than a factor of 5 relative to the power spectrum-only measurement. Imposing a strong prior on $b_ϕ$, or assuming bias relations for both $b_ϕ$ and $b_{ϕδ}$ (motivated by a universal mass function assumption), improves the constraints further by a factor of few. In this case, however, we find a significant systematic shift in the inferred value of $f_{\rm NL}$ if the same range of wavenumber is used. Likewise, a Poisson noise assumption can lead to significant systematics, and it is thus essential to leave all the stochastic amplitudes free.

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