论文标题
从宽带光度法中进行光度红移估计的学习光谱模板
Learning Spectral Templates for Photometric Redshift Estimation from Broadband Photometry
论文作者
论文摘要
从宽带光度法中估算红移通常受到我们可以准确地映射星系颜色到基础光谱模板的限制。当前技术利用了来自光谱合成模型的星系或光谱的分光光度法样品。这两种方法都有其局限性,要么样本量很小,而且通常不代表星系颜色的多样性,要么模型颜色可能是偏见的(通常是波长的函数),该颜色会在派生的红移中引入系统学。在本文中,我们从$ \ sim $ \ sim $ 100k星系的合奏中学习了基础光谱分布,并带有测量的红移和颜色。我们表明,与用于测量20个光谱模板样本的光度法相比,我们能够以明显更高的分辨率重建发射和吸收线。我们发现,与使用一组标准的光谱模板相比,我们的训练算法将衍生的光度红移中离群值的比例降低了28%,偏置高达91%,并且散射高达25%。我们讨论了这种方法的当前局限性及其用于恢复星系的基本特性的适用性。我们的派生模板和用于产生这些结果的代码在专用的GitHub存储库中公开可用:https://github.com/dirac-institute/photoz_template_learning。
Estimating redshifts from broadband photometry is often limited by how accurately we can map the colors of galaxies to an underlying spectral template. Current techniques utilize spectrophotometric samples of galaxies or spectra derived from spectral synthesis models. Both of these approaches have their limitations, either the sample sizes are small and often not representative of the diversity of galaxy colors or the model colors can be biased (often as a function of wavelength) which introduces systematics in the derived redshifts. In this paper we learn the underlying spectral energy distributions from an ensemble of $\sim$100K galaxies with measured redshifts and colors. We show that we are able to reconstruct emission and absorption lines at a significantly higher resolution than the broadband filters used to measure the photometry for a sample of 20 spectral templates. We find that our training algorithm reduces the fraction of outliers in the derived photometric redshifts by up to 28%, bias up to 91%, and scatter up to 25%, when compared to estimates using a standard set of spectral templates. We discuss the current limitations of this approach and its applicability for recovering the underlying properties of galaxies. Our derived templates and the code used to produce these results are publicly available in a dedicated Github repository: https://github.com/dirac-institute/photoz_template_learning.