Weak lensing mass-mapping is a useful tool to access the full distribution of dark matter on the sky, but because of intrinsic galaxy ellipticies and finite fields/missing data, the recovery of dark matter maps constitutes a challenging ill-posed inverse problem. We introduce a novel methodology allowing for efficient sampling of the high-dimensional Bayesian posterior of the weak lensing mass-mapping problem, and relying on simulations for defining a fully non-Gaussian prior. We aim to demonstrate the accuracy of the method on simulations, and then proceed to applying it to the mass reconstruction of the HST/ACS COSMOS field. The proposed methodology combines elements of Bayesian statistics, analytic theory, and a recent class of Deep Generative Models based on Neural Score Matching. This approach allows us to do the following: 1) Make full use of analytic cosmological theory to constrain the 2pt statistics of the solution. 2) Learn from cosmological simulations any differences between this analytic prior and full simulations. 3) Obtain samples from the full Bayesian posterior of the problem for robust Uncertainty Quantification. We demonstrate the method on the $\kappa$TNG simulations and find that the posterior mean significantly outperfoms previous methods (Kaiser-Squires, Wiener filter, Sparsity priors) both on root-mean-square error and in terms of the Pearson correlation. We further illustrate the interpretability of the recovered posterior by establishing a close correlation between posterior convergence values and SNR of clusters artificially introduced into a field. Finally, we apply the method to the reconstruction of the HST/ACS COSMOS field and yield the highest quality convergence map of this field to date.
翻译:微弱透镜质量映射是获取天空暗物质全面分布的有用工具,但由于银河系内含椭圆和有限字段/缺失数据,恢复暗物质地图是一个具有挑战性的反向问题。我们引入了一种新颖的方法,允许高效取样高维贝耶西亚镜面大规模映射问题后部,并依靠模拟来定义完全非Gaussian 之前的非Gaussian 数据。我们的目的是通过模拟显示方法的准确性,然后将它应用于HST/ACS COSOMOS 字段的大规模重建。拟议的方法将Bayesian统计数据、分析理论和最近一类基于神经评分匹配的深基因模型的元素结合起来。这个方法让我们可以做到如下:(1) 充分利用分析的宇宙学理论来限制解决方案的二元统计数据。 通过宇宙模拟来了解这个解析前和完整模拟的数值之间的任何差异。(3) 从整个Bayesian FaterS-S-Slor 图像中提取的样本,S-Weqoral-deal-deal destal date the Uncial romagistration Scial 和SNGAUncial-S-deal-deal-deal-degregistration the Uncal)