CWRU PAT Coffee Agenda

Tuesdays 10:30 - 11:30 | Fridays 11:30 - 12:30

Showing votes from 2020-01-28 11:30 to 2020-01-31 12:30 | Next meeting is Friday Aug 22nd, 11:30 am.

users

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astro-ph.CO

  • Hints of dark energy anisotropic stress using Machine Learning.- [PDF] - [Article]

    Rubén Arjona, Savvas Nesseris
     

    Recent analyses of the Planck data and quasars at high redshifts have suggested possible deviations from the flat $\Lambda$ cold dark matter model ($\Lambda$CDM), where $\Lambda$ is the cosmological constant. Here, we use machine learning methods to investigate any possible deviations from $\Lambda$CDM at both low and high redshifts by using the latest cosmological data. Specifically, we apply the genetic algorithms to explore the nature of dark energy (DE) in a model independent fashion by reconstructing its equation of state $w(z)$, the growth index of matter density perturbations $\gamma(z)$, the linear DE anisotropic stress $\eta_{DE}(z)$ and the adiabatic sound speed $c_{s,DE}^2(z)$ of DE perturbations. We find a $\sim2\sigma$ deviation of $w(z)$ from -1 at high redshifts, the adiabatic sound speed is negative at the $\sim2\sigma$ level and a $\sim3\sigma$ deviation of the anisotropic stress from unity at low redshifts and $\sim3.5 \sigma$ at high redshifts. These results suggest either the presence of a strong non-adiabatic component in the DE sound speed or the presence of DE anisotropic stress, thus hinting at possible deviations from the $\Lambda$CDM model.

astro-ph.HE

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astro-ph.GA

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astro-ph.IM

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gr-qc

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hep-ph

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hep-th

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hep-ex

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quant-ph

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other

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