论文标题
信号到噪声,红移和角范围对弱镜头函数的偏置的影响
The impact of signal-to-noise, redshift, and angular range on the bias of weak lensing 2-point functions
论文作者
论文摘要
弱透镜数据遵循自然偏斜的分布,这表明最有可能从调查中产生的数据向量将系统地降至其平均值以下。尽管从CMB-Analyses定性地知道了这种效果,但是在弱透镜中正确考虑它是具有挑战性的,因为CMB结果的直接转移在定量上是不正确的。虽然先前的研究(Sellentin等人,2018年)重点介绍了这种偏见的幅度,但我们在这里着重于这种偏见的频率,其与红移的扩展以及对调查信噪比的影响。用Cosebis过滤弱的镜头数据,我们表明弱透镜可能性偏向直到$ \ ell \ \ \ \ \ \ 100 $,而cmb-likelihoods Gaussians已经以$ \ ell \ 20 $为$。虽然Cosebi压缩的儿童和DES样红移和角范围的数据遵循高斯分布,但我们检测到偏度的偏度为6 $σ$的意义,这是由于这些调查的更广泛的覆盖范围和更深入的覆盖范围而引起的类似欧几瑟或LSST样数据集的意义。计算每个数据点的信噪比,我们表明,最高信噪比的数据点是最有偏见的。在所有红移中,这种偏见至少影响了调查总信噪比的10%,高红移高达25%。因此,偏见有望影响参数推断。可以通过发展非高斯的可能性来处理偏见。否则,可以通过删除最高信噪比的数据点来减少它。
Weak lensing data follow a naturally skewed distribution, implying the data vector most likely yielded from a survey will systematically fall below its mean. Although this effect is qualitatively known from CMB-analyses, correctly accounting for it in weak lensing is challenging, as a direct transfer of the CMB results is quantitatively incorrect. While a previous study (Sellentin et al. 2018) focused on the magnitude of this bias, we here focus on the frequency of this bias, its scaling with redshift, and its impact on the signal-to-noise of a survey. Filtering weak lensing data with COSEBIs, we show that weak lensing likelihoods are skewed up until $\ell \approx 100$, whereas CMB-likelihoods Gaussianize already at $\ell \approx 20$. While COSEBI-compressed data on KiDS- and DES-like redshift- and angular ranges follow Gaussian distributions, we detect skewness at 6$σ$ significance for half of a Euclid- or LSST-like data set, caused by the wider coverage and deeper reach of these surveys. Computing the signal-to-noise ratio per data point, we show that precisely the data points of highest signal-to-noise are the most biased. Over all redshifts, this bias affects at least 10% of a survey's total signal-to-noise, at high redshifts up to 25%. The bias is accordingly expected to impact parameter inference. The bias can be handled by developing non-Gaussian likelihoods. Otherwise, it could be reduced by removing the data points of highest signal-to-noise.