2022
DOI: 10.1093/mnras/stac687
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Reconstruction of the dark sectors’ interaction: A model-independent inference and forecast from GW standard sirens

Abstract: Interacting dark matter (DM) - dark energy (DE) models have been intensively investigated in the literature for their ability to fit various data sets as well as to explain some observational tensions persisting within the ΛCDM cosmology. In this work, we employ the Gaussian processes (GP) algorithm to perform a joint analysis by using the geometrical cosmological probes such as Cosmic chronometers, Supernova Type Ia, Baryon Acoustic Oscillations, and the H0LiCOW lenses sample to infer a reconstruction of the … Show more

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Cited by 15 publications
(7 citation statements)
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“…Here we notice the existence of regions where the standard model remains outside the 68% CL (1-σ), which could motivate further studies of an interaction kernel with the presence of oscillations. The general tendency of this function also resembles a previously obtained result in [123] with regards to the predominant negative values at late times. The last reconstructed derived features are the effective equations of state parameters and the energy densities.…”
Section: Resultssupporting
confidence: 88%
See 1 more Smart Citation
“…Here we notice the existence of regions where the standard model remains outside the 68% CL (1-σ), which could motivate further studies of an interaction kernel with the presence of oscillations. The general tendency of this function also resembles a previously obtained result in [123] with regards to the predominant negative values at late times. The last reconstructed derived features are the effective equations of state parameters and the energy densities.…”
Section: Resultssupporting
confidence: 88%
“…A possible way to avoid these issues it to perform reconstructions by extracting information directly from the data, using model-independent techniques or non-parametric ones, such as Artificial Neural Networks [108][109][110], Gaussian Process [110][111][112][113][114][115][116][117][118] or, recently, we can see applications of binning, linear interpolations and the incorporation of a correlation function in [119]. The Gaussian process (GP), specifically for the IDE models, has become a regular choice for a non-parametric approach [120][121][122][123][124][125]. This methodology has found JCAP11(2023)051 a possibility of an interaction and given some insights into possible preferred behaviors and characteristics, such as a crossing of the non-interacting line.…”
Section: Introductionmentioning
confidence: 99%
“…Adding GW data could detect the interaction at the 3σ C.L. [353], improve the statistical significance of the null result [356] or reconstruct the coupling function [71].…”
Section: Forecasts For Future Experimentsmentioning
confidence: 99%
“…It allows us to study various problems independently of an underlying cosmological model. GP have been used to study the evolution of the dark energy state constant, w(z) [39,[62][63][64], the deceleration parameter, q(z) [40,65], [ f σ 8 ](z) [37,[66][67][68], the homogeneity scale, R H (z) [50], the duality relation, η(z) [69], and a possible time evolution of the growth index, i.e., γ = γ (z) [17,36,37], among several other applications in modern cosmology [70][71][72][73][74][75][76][77][78][79].…”
Section: Gaussian Processesmentioning
confidence: 99%