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arxiv:2104.00595

Neural network reconstructions for the Hubble parameter, growth rate and distance modulus

Published on Apr 1, 2021
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Abstract

Artificial neural networks are used to reconstruct cosmological functions from observational data with minimal theoretical assumptions, while variational autoencoders generate synthetic covariance matrices for supernova data.

This paper introduces a new approach to reconstruct cosmological functions using artificial neural networks based on observational measurements with minimal theoretical and statistical assumptions. By using neural networks, we can generate computational models of observational datasets, and then we compare them with the original ones to verify the consistency of our method. This methodology is applicable to even small-size datasets. In particular, we test the proposed method with data coming from cosmic chronometers, fσ_8 measurements, and the distance modulus of the Type Ia supernovae. Furthermore, we introduce a first approach to generate synthetic covariance matrices through a variational autoencoder, using the systematic covariance matrix of the Type Ia supernova compilation.

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