Information field theory for cosmological perturbation reconstruction and non-linear signal analysis
Torsten A. Ensslin, Mona Frommert, Francisco S. Kitaura

TL;DR
This paper introduces information field theory (IFT) as a Bayesian inference framework for reconstructing and analyzing non-linear signals in cosmology, demonstrated through large-scale structure and CMB non-linearity detection.
Contribution
It develops a comprehensive IFT framework with Feynman rules and applies it to cosmological problems like structure reconstruction and non-linearity detection in CMB data.
Findings
IFT reproduces Wiener-filter theory
Response-renormalization flow enables structure reconstruction
Optimal filter for non-linearity detection in CMB data
Abstract
We develop information field theory (IFT) as a means of Bayesian inference on spatially distributed signals, the information fields. A didactical approach is attempted. Starting from general considerations on the nature of measurements, signals, noise, and their relation to a physical reality, we derive the information Hamiltonian, the source field, propagator, and interaction terms. Free IFT reproduces the well known Wiener-filter theory. Interacting IFT can be diagrammatically expanded, for which we provide the Feynman rules in position-, Fourier-, and spherical harmonics space, and the Boltzmann-Shannon information measure. The theory should be applicable in many fields. However, here, two cosmological signal recovery problems are discussed in their IFT-formulation. 1) Reconstruction of the cosmic large-scale structure matter distribution from discrete galaxy counts in incomplete…
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