莱曼-α森林宇宙学的最佳数据压缩

IF 4.7 3区 物理与天体物理 Q1 ASTRONOMY & ASTROPHYSICS
Francesca Gerardi, Andrei Cuceu, Benjamin Joachimi, Seshadri Nadathur, Andreu Font-Ribera
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引用次数: 0

摘要

莱曼-α(Lyα)三维相关函数已被广泛用于利用重子声振荡(BAO)尺度进行宇宙学推断。传统的推断方法采用的是包含数千个数据点的数据矢量,而我们采用的是近乎最大化的分数压缩,压缩后的数据元素只有几十个。我们的研究表明,除了与每个推断模型参数相关的数据外,还需要精心构建额外的数据,以保留有意义的拟合优度测试,防止未知的系统性,并避免非线性参数依赖性造成的信息损失。我们在一组现实模拟和来自扩展重子振荡光谱巡天的 DR16 数据上证明,我们的压缩方法是无损和无偏的,得到的后验结果与传统分析无异。作为早期应用,我们研究了从有限数量的模拟中估算出的协方差矩阵的影响,该矩阵只在压缩空间中条件良好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimal data compression for Lyman-α forest cosmology
The Lyman-α (Lyα) three-dimensional correlation functions have been widely used to perform cosmological inference using the baryon acoustic oscillation (BAO) scale. While the traditional inference approach employs a data vector with several thousand data points, we apply near-maximal score compression down to tens of compressed data elements. We show that carefully constructed additional data beyond those linked to each inferred model parameter are required to preserve meaningful goodness-of-fit tests that guard against unknown systematics, and to avoid information loss due to non-linear parameter dependencies. We demonstrate, on suites of realistic mocks and DR16 data from the Extended Baryon Oscillation Spectroscopic Survey, that our compression approach is lossless and unbiased, yielding a posterior that is indistinguishable from that of the traditional analysis. As an early application, we investigate the impact of a covariance matrix estimated from a limited number of mocks, which is only well-conditioned in compressed space.
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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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