论文标题
分层贝叶斯的贝叶斯推断具有恒星种群合成模型的光度降期
Hierarchical Bayesian inference of photometric redshifts with stellar population synthesis models
论文作者
论文摘要
我们提出了一个贝叶斯分层框架,以分析具有出色的人群合成(SPS)模型的光度星系调查数据。我们的方法将光谱能量分布的强大建模与人群模型和噪声模型融合,以分别表征星系人群和实际观察的统计特性。 By self-consistently inferring all model parameters, from high-level hyper-parameters to SPS parameters of individual galaxies, one can separate sources of bias and uncertainty in the data.We demonstrate the strengths and flexibility of this approach by deriving accurate photometric redshifts for a sample of spectroscopically-confirmed galaxies in the COSMOS field, all with 26-band photometry and spectroscopic红移。我们基于相同的数据,通过公开发行的光度红移目录实现了性能竞争。在这项工作之前,由于SPS模型调用的严重计算负载,这种方法在实践中在实践中很棘手。我们用神经模拟器克服了这一挑战。我们发现,最大的光度残差与发射线光度的校准较差有关,因此建立了一个减轻这些效果的框架。通过机器学习加速的基于物理建模的这种组合铺平了满足对光度红移估计准确性的严格要求的道路,该估计通过即将进行的宇宙学调查进行。该方法还具有通过分析光度数据集在宇宙学和星系演化之间建立新的联系的潜力。
We present a Bayesian hierarchical framework to analyze photometric galaxy survey data with stellar population synthesis (SPS) models. Our method couples robust modeling of spectral energy distributions with a population model and a noise model to characterize the statistical properties of the galaxy populations and real observations, respectively. By self-consistently inferring all model parameters, from high-level hyper-parameters to SPS parameters of individual galaxies, one can separate sources of bias and uncertainty in the data.We demonstrate the strengths and flexibility of this approach by deriving accurate photometric redshifts for a sample of spectroscopically-confirmed galaxies in the COSMOS field, all with 26-band photometry and spectroscopic redshifts. We achieve a performance competitive with publicly-released photometric redshift catalogs based on the same data. Prior to this work, this approach was computationally intractable in practice due to the heavy computational load of SPS model calls; we overcome this challenge using with neural emulators. We find that the largest photometric residuals are associated with poor calibration for emission line luminosities and thus build a framework to mitigate these effects. This combination of physics-based modeling accelerated with machine learning paves the path towards meeting the stringent requirements on the accuracy of photometric redshift estimation imposed by upcoming cosmological surveys. The approach also has the potential to create new links between cosmology and galaxy evolution through the analysis of photometric datasets.