论文标题
通过神经评分匹配对暗物质的概率映射
Probabilistic Mapping of Dark Matter by Neural Score Matching
论文作者
论文摘要
宇宙大规模结构中存在的暗物质是看不见的,但是可以通过它对遥远星系图像的小重力透镜效应来推断其存在。通过测量对大量星系的镜头效应,可以重建天空上暗物质分布的地图。但是,由于缺少数据和噪声占主导地位的测量,这代表了一个极具挑战性的反问题。在这项工作中,我们提出了一种通过结合贝叶斯统计,分析物理理论的要素以及基于神经评分匹配的最新生成模型的新方法来解决此类反问题的新方法。这种方法允许进行以下操作:(1)充分利用分析宇宙学理论来限制溶液的2PT统计数据,(2)从宇宙学模拟中学习此分析先验和完整模拟之间的任何差异,以及(3)从全部贝叶斯的后代获得样本,以实现强大的不确定性量化问题。我们将这种方法的应用在哈勃太空望远镜宇宙场的第一个深度学习辅助暗物质图重建中。
The Dark Matter present in the Large-Scale Structure of the Universe is invisible, but its presence can be inferred through the small gravitational lensing effect it has on the images of far away galaxies. By measuring this lensing effect on a large number of galaxies it is possible to reconstruct maps of the Dark Matter distribution on the sky. This, however, represents an extremely challenging inverse problem due to missing data and noise dominated measurements. In this work, we present a novel methodology for addressing such inverse problems by combining elements of Bayesian statistics, analytic physical theory, and a recent class of Deep Generative Models based on Neural Score Matching. This approach allows 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, and (3) obtain samples from the full Bayesian posterior of the problem for robust Uncertainty Quantification. We present an application of this methodology on the first deep-learning-assisted Dark Matter map reconstruction of the Hubble Space Telescope COSMOS field.