DeepLSS: breaking parameter degeneracies in large scale structure with deep learning analysis of combined probes
This addresses the problem of limited measurement precision due to degeneracies in cosmological parameters for researchers in cosmology and astrophysics, representing a strong specific gain rather than an incremental improvement.
The paper tackles parameter degeneracies in large-scale structure surveys by using a deep learning analysis called DeepLSS on combined weak lensing and galaxy clustering probes, resulting in significant precision gains, such as an 8x improvement for the intrinsic alignment amplitude and a 15x increase in the figure of merit for σ8 and Ωm.
In classical cosmological analysis of large scale structure surveys with 2-pt functions, the parameter measurement precision is limited by several key degeneracies within the cosmology and astrophysics sectors. For cosmic shear, clustering amplitude $σ_8$ and matter density $Ω_m$ roughly follow the $S_8=σ_8(Ω_m/0.3)^{0.5}$ relation. In turn, $S_8$ is highly correlated with the intrinsic galaxy alignment amplitude $A_{\rm{IA}}$. For galaxy clustering, the bias $b_g$ is degenerate with both $σ_8$ and $Ω_m$, as well as the stochasticity $r_g$. Moreover, the redshift evolution of IA and bias can cause further parameter confusion. A tomographic 2-pt probe combination can partially lift these degeneracies. In this work we demonstrate that a deep learning analysis of combined probes of weak gravitational lensing and galaxy clustering, which we call DeepLSS, can effectively break these degeneracies and yield significantly more precise constraints on $σ_8$, $Ω_m$, $A_{\rm{IA}}$, $b_g$, $r_g$, and IA redshift evolution parameter $η_{\rm{IA}}$. The most significant gains are in the IA sector: the precision of $A_{\rm{IA}}$ is increased by approximately 8x and is almost perfectly decorrelated from $S_8$. Galaxy bias $b_g$ is improved by 1.5x, stochasticity $r_g$ by 3x, and the redshift evolution $η_{\rm{IA}}$ and $η_b$ by 1.6x. Breaking these degeneracies leads to a significant gain in constraining power for $σ_8$ and $Ω_m$, with the figure of merit improved by 15x. We give an intuitive explanation for the origin of this information gain using sensitivity maps. These results indicate that the fully numerical, map-based forward modeling approach to cosmological inference with machine learning may play an important role in upcoming LSS surveys. We discuss perspectives and challenges in its practical deployment for a full survey analysis.