Reconciling Early and Late Time Tensions with Reinforcement Learning

Mohit K. Sharma, M. Sami
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Abstract

We study the possibility of accommodating both early and late-time tensions using a novel reinforcement learning technique. By applying this technique, we aim to optimize the evolution of the Hubble parameter from recombination to the present epoch, addressing both tensions simultaneously. To maximize the goodness of fit, our learning technique achieves a fit that surpasses even the $\Lambda$CDM model. Our results demonstrate a tendency to weaken both early and late time tensions in a completely model-independent manner.
用强化学习调和早晚时间的紧张关系
我们研究了利用新颖的强化学习技术兼顾早期和晚期紧张关系的可能性。通过应用这种技术,我们试图优化哈勃参数从重组到当前纪元的演化,同时解决两种张力问题。为了最大限度地提高拟合度,我们的学习技术达到了甚至超过$\Lambda$CDM模型的拟合度。我们的结果表明,早期和晚期时间张力都有减弱的趋势,而且完全与模型无关。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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