用于系外行星凌日和H0推断的内核、均值和噪声边际化高斯过程

IF 4.7 3区 物理与天体物理 Q1 ASTRONOMY & ASTROPHYSICS Monthly Notices of the Royal Astronomical Society Pub Date : 2024-01-11 DOI:10.1093/mnras/stae087
Namu Kroupa, David Yallup, Will Handley, Michael Hobson
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引用次数: 0

摘要

利用完全贝叶斯方法,高斯过程回归被扩展到包括核选择和核超参数的边际化。此外,通过证据进行贝叶斯模型比较可以直接进行核比较。联合后验的计算是通过一个跨维采样器来实现的,该采样器通过将离散核选择及其超参数嵌入一个高维空间,同时对其进行采样。在系外行星凌日光变曲线模拟的合成数据上探索了核恢复和均值函数推断。随后,将该方法扩展到均值函数和噪声模型的边际化,并应用于根据独立于宇宙模型的宇宙天文台和独立于Λ CDM 的重子声振荡观测所获得的哈勃参数随红移变化的实际测量值推断现今的哈勃参数 H0。从宇宙天文台、重子声学振荡和综合数据集推断出的 H0 值分别为 H0 = 66 ± 6 km s-1 Mpc-1、H0 = 67 ± 10 km s-1 Mpc-1 和 H0 = 69 ± 6 km s-1 Mpc-1。宇宙计时器数据集的核后验倾向于非稳态线性核。最后,数据集的 ln R = 12.17 ± 0.02 显示并不紧张。
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Kernel-, mean- and noise-marginalised Gaussian processes for exoplanet transits and H0 inference
Using a fully Bayesian approach, Gaussian Process regression is extended to include marginalisation over the kernel choice and kernel hyperparameters. In addition, Bayesian model comparison via the evidence enables direct kernel comparison. The calculation of the joint posterior was implemented with a transdimensional sampler which simultaneously samples over the discrete kernel choice and their hyperparameters by embedding these in a higher-dimensional space, from which samples are taken using nested sampling. Kernel recovery and mean function inference were explored on synthetic data from exoplanet transit light curve simulations. Subsequently, the method was extended to marginalisation over mean functions and noise models and applied to the inference of the present-day Hubble parameter, H0, from real measurements of the Hubble parameter as a function of redshift, derived from the cosmologically model-independent cosmic chronometer and ΛCDM-dependent baryon acoustic oscillation observations. The inferred H0 values from the cosmic chronometers, baryon acoustic oscillations and combined datasets are H0 = 66 ± 6 km s−1 Mpc−1, H0 = 67 ± 10 km s−1 Mpc−1 and H0 = 69 ± 6 km s−1 Mpc−1, respectively. The kernel posterior of the cosmic chronometers dataset prefers a non-stationary linear kernel. Finally, the datasets are shown to be not in tension with ln R = 12.17 ± 0.02.
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来源期刊
CiteScore
9.10
自引率
37.50%
发文量
3198
审稿时长
3 months
期刊介绍: Monthly Notices of the Royal Astronomical Society is one of the world''s leading primary research journals in astronomy and astrophysics, as well as one of the longest established. It publishes the results of original research in positional and dynamical astronomy, astrophysics, radio astronomy, cosmology, space research and the design of astronomical instruments.
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