Reconstructing inflationary features on large scales using genetic algorithm
Alipriyo Hoory, Dhiraj Kumar Hazra, L. Sriramkumar

TL;DR
This paper uses a genetic algorithm to reconstruct inflationary features in the primordial power spectrum, improving the fit to CMB data and potentially addressing cosmological tensions.
Contribution
It introduces a machine learning pipeline based on genetic algorithms to systematically generate inflationary features consistent with Planck 2018 data.
Findings
Reconstructed features improve the fit to CMB data by Δχ² ≲ -10.
GA identifies alternative background parameters yielding similar fit improvements.
Generated features could help alleviate existing cosmological tensions.
Abstract
[Abridged] A variety of model-dependent as well as model-independent approaches suggest that certain localized features in the primordial scalar power spectrum can lead to a significantly better fit to the observed anisotropies in the cosmic microwave background (CMB). In this work, we focus on three types of such features and examine whether these features can be generated in inflationary scenarios driven by a single, canonical scalar field. We consider a slowly rolling baseline model that is described by a specific time-dependence of the first slow roll parameter and we generate the desired features in the power spectrum through suitable modifications to the functional form of the slow roll parameter. To systematically reconstruct the desired features in the scalar power spectrum (or, equivalently, the modifications in the behavior of the first slow roll parameter) that are consistent…
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