Diagnosing Systematic Effects Using the Inferred Initial Power Spectrum
Tristan Hoellinger, Florent Leclercq

TL;DR
This paper presents a novel framework using the inferred initial matter power spectrum to diagnose and mitigate systematic effects in galaxy surveys, improving the robustness of cosmological parameter inference.
Contribution
It introduces a two-step method combining SELFI and implicit likelihood inference to identify systematic biases before parameter estimation.
Findings
Systematic effects can bias cosmological parameters by over 2σ.
The framework detects misspecified models affecting the initial matter power spectrum.
It provides a practical guide for assessing survey systematic impacts.
Abstract
The next generation of galaxy surveys has the potential to substantially deepen our understanding of the Universe. This potential hinges on our ability to rigorously address systematic uncertainties. Until now, diagnosing systematic effects prior to inferring cosmological parameters has been out of reach in field-based implicit likelihood cosmological inference frameworks. As a solution, we aim to diagnose a variety of systematic effects in galaxy surveys prior to inferring cosmological parameters, using the inferred initial matter power spectrum. Our approach is built upon a two-step framework. First, we employed the SELFI algorithm to infer the initial matter power spectrum, which we utilised to thoroughly investigate the impact of systematic effects. This investigation relies on a single set of -body simulations. Second, we obtained a posterior on cosmological parameters via…
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