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Inferring S-8(z) and gamma(z) with cosmic growth rate measurements using machine learning

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Autor(es):
Avila, Felipe ; Bernui, Armando ; Bonilla, Alexander ; Nunes, Rafael C.
Número total de Autores: 4
Tipo de documento: Artigo Científico
Fonte: EUROPEAN PHYSICAL JOURNAL C; v. 82, n. 7, p. 10-pg., 2022-07-06.
Resumo

Measurements of the cosmological parameter S-8 provided by cosmic microwave background and large scale structure data reveal some tension between them, suggesting that the clustering features of matter in these early and late cosmological tracers could be different. In this work, we use a supervised learning method designed to solve Bayesian approach to regression, known as Gaussian Processes regression, to quantify the cosmic evolution of S-8 up to z similar to 1.5. For this, we propose a novel approach to find firstly the evolution of the function S-8(z), then we find the function S-8(z). As a sub-product we obtain a minimal cosmological model-dependent sigma(8)(z = 0) and S-8(z = 0) estimates. We select independent data measurements of the growth rate f (z) and of [f sigma(8)] (z) according to criteria of non-correlated data, then we perform the Gaussian reconstruction of these data sets to obtain the cosmic evolution of sigma(8)(z), S-8(z), and the growth index gamma(z). Our statistical analyses show that S-8(z) is compatible with Planck ACDM cosmology; when evaluated at the present time we find sigma(8)(z = 0) = 0.766 +/- 0.116 and S-8(z = 0) = 0.732 +/- 0.115. Applying our methodology to the growth index, we find gamma(z = 0) = 0.465 +/- 0.140. Moreover, we compare our results with others recently obtained in the literature. In none of these functions, i.e. sigma(8)(Z), S-8(z), and gamma(z), do we find significant deviations from the standard cosmology predictions. (AU)

Processo FAPESP: 18/18036-5 - Investigando aspectos físicos além do modelo padrão ligados aos temas de energia escura, gravidade modificada, neutrinos e ondas gravitacionais
Beneficiário:Rafael da Costa Nunes
Modalidade de apoio: Bolsas no Brasil - Pós-Doutorado