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首页> 外文期刊>The Astrophysical journal >JOINT BAYESIAN COMPONENT SEPARATION AND CMB POWER SPECTRUM ESTIMATION
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JOINT BAYESIAN COMPONENT SEPARATION AND CMB POWER SPECTRUM ESTIMATION

机译:贝叶斯联合分量分离和CMB功率谱估计

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摘要

We describe and implement an exact, flexible, and computationally efficient algorithm for joint component separation and CMB power spectrum estimation, building on a Gibbs sampling framework. Two essential new features are (1) conditional sampling of foreground spectral parameters and (2) joint sampling of all amplitude-type degrees of freedom (e.g., CMB, foreground pixel amplitudes, and global template amplitudes) given spectral parameters. Given a parametric model of the foreground signals, we estimate efficiently and accurately the exact joint foreground-CMB posterior distribution and, therefore, all marginal distributions such as the CMB power spectrum or foreground spectral index posteriors. The main limitation of the current implementation is the requirement of identical beam responses at all frequencies, which restricts the analysis to the lowest resolution of a given experiment. We outline a future generalization to multiresolution observations. To verify the method, we analyze simple models and compare the results to analytical predictions. We then analyze a realistic simulation with properties similar to the 3 yr WMAP data, downgraded to a common resolution of 3° FWHM. The results from the actual 3 yr WMAP temperature analysis are presented in a companion Letter.
机译:我们基于Gibbs采样框架,描述并实现一种精确,灵活且计算高效的算法,用于联合组件分离和CMB功率谱估计。两个基本的新功能是(1)对前景光谱参数进行条件采样和(2)在给定光谱参数的情况下对所有幅度类型的自由度(例如CMB,前景像素幅度和全局模板幅度)进行联合采样。给定前景信号的参数模型,我们可以高效,准确地估计确切的联合前景CMB后验分布,因此可以估计所有边际分布,例如CMB功率谱或后验光谱指数后验。当前实现的主要限制是在所有频率下都需要相同的波束响应,这将分析限制在给定实验的最低分辨率下。我们概述了对多分辨率观测的未来概括。为了验证该方法,我们分析了简单的模型,并将结果与​​分析预测进行了比较。然后,我们分析具有与3年WMAP数据相似的属性的真实模拟,并将其降级为3°FWHM的通用分辨率。实际3年WMAP温度分析的结果显示在随附的信函中。

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