2022
DOI: 10.48550/arxiv.2205.06252
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Solving the $H_{0}$ tension in $f(T)$ Gravity through Bayesian Machine Learning

Abstract: Bayesian Machine Learning (BML) and strong lensing time delay (SLTD) techniques are used in order to tackle the H0 tension in f (T ) gravity. The power of BML relies on employing a model-based generative process which already plays an important role in different domains of cosmology and astrophysics, being the present work a further proof of this. Three viable f (T ) models are considered: a power law, an exponential, and a squared exponential model. The learned constraints and respective results indicate that… Show more

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