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Estimating extinction using unsupervised machine learning

机译:使用无监督机器学习估计灭绝

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Dust extinction is the most robust tracer of the gas distribution in the interstellar medium, but measuring extinction is limited by the systematic uncertainties involved in estimating the intrinsic colors to background stars. In this paper we present a new technique, Pnicer, that estimates intrinsic colors and extinction for individual stars using unsupervised machine learning algorithms. This new method aims to be free from any priors with respect to the column density and intrinsic color distribution. It is applicable to any combination of parameters and works in arbitrary numbers of dimensions. Furthermore, it is not restricted to color space. Extinction toward single sources is determined by fitting Gaussian mixture models along the extinction vector to (extinction-free) control field observations. In this way it becomes possible to describe the extinction for observed sources with probability densities, rather than a single value. Pnicer effectively eliminates known biases found in similar methods and outperforms them in cases of deep observational data where the number of background galaxies is significant, or when a large number of parameters is used to break degeneracies in the intrinsic color distributions. This new method remains computationally competitive, making it possible to correctly de-redden millions of sources within a matter of seconds. With the ever-increasing number of large-scale high-sensitivity imaging surveys, Pnicer offers a fast and reliable way to efficiently calculate extinction for arbitrary parameter combinations without prior information on source characteristics. The Pnicer software package also offers access to the well-established Nicer technique in a simple unified interface and is capable of building extinction maps including the Nicest correction for cloud substructure. Pnicer is offered to the community as an open-source software solution and is entirely written in Python.
机译:尘埃消灭是星际介质中气体分布的最可靠的示踪剂,但是消光的测量受到估计背景恒星固有颜色所涉及的系统不确定性的限制。在本文中,我们提出了一种新技术Pnicer,该技术使用无监督的机器学习算法来估计单个恒星的固有颜色和消光。这种新方法旨在在色谱柱密度和固有颜色分布方面没有任何先验。它适用于任何参数组合,并且可以在任意数量的尺寸中使用。此外,它不限于色彩空间。通过将高斯混合模型沿着消光矢量拟合到(无消光)控制场观测值,可以确定对单个源的消光。这样,就可以用概率密度而不是单个值描述观测到的源的灭绝。 Pnicer有效地消除了在类似方法中发现的已知偏差,并且在深观测数据(背景星系的数量很大或使用大量参数来破坏固有颜色分布中的简并性)的情况下,其性能优于后者。这种新方法在计算上仍然具有竞争力,可以在几秒钟内正确地减少数百万个源的数量。随着大规模高灵敏度成像勘测的数量不断增加,Pnicer提供了一种快速可靠的方法来有效地计算任意参数组合的消光,而无需事先提供源特性的信息。 Pnicer软件包还可以在一个简单的统一界面中访问成熟的Nicer技术,并且能够构建灭绝图,包括对云子结构的Nicest校正。 Pnicer作为开源软件解决方案提供给社区,并且完全用Python编写。

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