高斯混合源的贝叶斯因子分析,及其在宇宙微波背景分离中的应用

Simon P. Wilson, E. Kuruoğlu, Alicia Quirós Carretero
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引用次数: 1

摘要

本文建立了一个全贝叶斯因子分析模型,该模型假定每个因子都有一个非常一般的模型,即高斯混合模型。我们讨论因素既独立又相关的情况。在统计文献中,因子分析主要被用作降维技术,对因素的先验建模几乎没有兴趣,但这里的应用是源分离,其中因素可能有直接的解释,而通常的高斯模型对于一个因素可能不合适。这就是说明我们工作的应用程序的情况,即从以不同频率拍摄的全天图像中识别不同来源的地外微波。特别是,人们对将宇宙微波背景(CMB)信号从其他来源中分离出来很感兴趣。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bayesian factor analysis using Gaussian mixture sources, with application to separation of the cosmic microwave background
In this paper a fully Bayesian factor analysis model is developed that assumes a very general model for each factor, namely the Gaussian mixture. We discuss the cases where factors are both independent and dependent. In the statistical literature, factor analysis has been used principally as a dimension reduction technique, with little interest in a priori modelling of the factors, but here the application is source separation where the factors may have a direct interpretation and the usual Gaussian model for a factor may not be appropriate. That is the case for the application that illustrates our work, which is that of identifying different sources of extra-terrestrial microwaves from all-sky images taken at different frequencies. In particular there is interest in separating out the cosmic microwave background (CMB) signal from the other sources.
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