In search of an interaction in the dark sector through Gaussian Process and ANN approaches

Abstract

Whether the current observational data indicate any evidence of interaction between the dark sector is a matter of supreme interest at the present moment. This article searched for an interaction in the dark sector between a pressure-less dark matter and a dark energy fluid with constant equation of state, w DE. For this purpose, two non-parametric approaches, namely, the Gaussian Process (GP) and the Artificial Neural Networks (ANN) have been employed and using the Hubble data from Cosmic Chronometers (CC), Pantheon+ from Supernovae Type Ia and their combination we have reconstructed the interaction function. We find that for w DE =-1, the interaction in the dark sector is not prominent while for w DE ≠ -1, evidence of interaction is found depending on the value of w DE. In particularly, we find that if we start deviating from w DE = -1 either in the quintessence (w DE > -1) or phantom (w DE < -1) direction, an emergence of dark interaction is observed from both GP and ANN reconstructions. We further note that ANN which is applied for the first time in this context seems to play a very efficient role compared to GP.

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