Hybrid summary statistics: neural weak lensing inference beyond the power spectrum

T. Lucas Makinen, Tom Charnock, Natalia Porqueres, Axel Lapel, Alan Heavens, Benjamin D. Wandelt
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Abstract

In inference problems, we often have domain knowledge which allows us to define summary statistics that capture most of the information content in a dataset. In this paper, we present a hybrid approach, where such physics-based summaries are augmented by a set of compressed neural summary statistics that are optimised to extract the extra information that is not captured by the predefined summaries. The resulting statistics are very powerful inputs to simulation-based or implicit inference of model parameters. We apply this generalisation of Information Maximising Neural Networks (IMNNs) to parameter constraints from tomographic weak gravitational lensing convergence maps to find summary statistics that are explicitly optimised to complement angular power spectrum estimates. We study several dark matter simulation resolutions in low- and high-noise regimes. We show that i) the information-update formalism extracts at least $3\times$ and up to $8\times$ as much information as the angular power spectrum in all noise regimes, ii) the network summaries are highly complementary to existing 2-point summaries, and iii) our formalism allows for networks with smaller, physically-informed architectures to match much larger regression networks with far fewer simulations needed to obtain asymptotically optimal inference.
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混合汇总统计:超越功率谱的神经弱透镜推理
在推理问题中,我们通常掌握了一些领域知识,这些知识允许我们定义能够捕捉数据集中大部分信息内容的摘要统计。在本文中,我们提出了一种混合方法,即用一组压缩神经汇总统计量来增强这种基于物理的汇总统计量,这些统计量经过优化,可以提取预定义的汇总统计量未捕捉到的额外信息。由此产生的统计量是对模型参数进行基于模拟或隐式推断的强大输入。我们将信息最大化神经网络(IMNNs)的这一概括应用于来自断层扫描弱引力透镜收敛图的参数约束,以找到明确优化以补充角功率谱估计的汇总统计量。我们研究了低噪声和高噪声状态下的几种暗物质模拟分辨率。我们表明:i)信息上数据形式主义提取的信息量至少是角功率谱在所有噪声状态下的3倍,最多可达8倍;ii)网络摘要与现有的2点摘要具有高度互补性;iii)我们的形式主义允许具有较小的、物理信息架构的网络与较大的回归网络相匹配,而获得渐近最优推理所需的模拟次数要少得多。
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