Exploring Hu-Sawicki-like modified gravity with Genetic Algorithms

Abstract

We investigate whether viable Hu-Sawicki-like f(R) models can produce deviations from ΛCDM that can be tested against current background cosmological data. We adopt a machine-learning approach based on Genetic Algorithms (GA) to reconstruct analytical perturbations around the Hu-Sawicki class of models. We develop a pipeline that interfaces the GATO GA code with the CANDI cosmology code. Each f(R) function generated by the GA is first tested against theoretical viability conditions, including stability, the recovery of a standard matter-dominated epoch, the General Relativity limit, and chameleon screening mechanism. Viable candidates are then passed to CANDI to reconstruct the corresponding background cosmology and are tested against DESI DR2 BAO measurements and the Pantheon+ Type Ia supernova catalogue. % The deviations we find are largest at late times, where the lower curvature makes modified-gravity effects more relevant, and are rapidly suppressed at higher redshift, in agreement with the imposed matching to the matter-dominated era. To further quantify deviations from the standard cosmological model, we compute the Om(z) diagnostic. It shows only a very small departure from the constant ΛCDM behaviour. The effective dark energy equation of state associated with the reconstructed f(R) function also evolves only weakly, showing a mild transition from an effective quintessence-like nature to an effective phantom-like regime. Overall, our results indicate that, within perturbations around the Hu-Sawicki class of models, current background data allow only limited deviations from ΛCDM.

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