论文标题
改进的3x2pt镜头样品的层析成像套筒:神经网络分类器和最佳bin分配
Improved Tomographic Binning of 3x2pt Lens Samples: Neural Network Classifiers and Optimal Bin Assignments
论文作者
论文摘要
大型成像调查,例如对空间和时间的传统调查,依赖于光度红移和层析成像套在一起,用于结合星系聚类和弱透镜的3x2PT分析。在本文中,我们提出了一种优化星系镜头样品的层析成像套筒选择的方法。我们将COSMODC2和Buzzard模拟的Galaxy目录分为训练集和应用程序集,其中训练集以逼真的方式不具有代表性,然后估算应用程序集的光度红移。星系分为红移箱,覆盖红移或共同距离的等分间隔,或者每个垃圾箱中的星系数量相等,我们考虑这些方法的广义扩展。我们发现,相等距离的垃圾箱产生了初始套件选择的最高深色能量图,但是可以进一步优化垃圾箱边缘的选择。然后,我们训练神经网络分类器,以识别极有可能具有准确的光度红移估计值的星系,或者很可能将其分类为正确的红移箱。神经网络分类器用于清除样品中的红移估计不良,结果与未去除任何样品的情况进行了比较。我们发现,神经网络分类器能够将优点数字提高约13%,并且能够在使用非代表性培训样本时恢复〜25%的损失。
Large imaging surveys, such as the Legacy Survey of Space and Time, rely on photometric redshifts and tomographic binning for 3x2pt analyses that combine galaxy clustering and weak lensing. In this paper, we propose a method for optimizing the tomographic binning choice for the lens sample of galaxies. We divide the CosmoDC2 and Buzzard simulated galaxy catalogs into a training set and an application set, where the training set is nonrepresentative in a realistic way, and then estimate photometric redshifts for the application sets. The galaxies are sorted into redshift bins covering equal intervals of redshift or comoving distance, or with an equal number of galaxies in each bin, and we consider a generalized extension of these approaches. We find that bins of equal comoving distance produce the highest dark energy figure of merit of the initial binning choices, but that the choice of bin edges can be further optimized. We then train a neural network classifier to identify galaxies that are either highly likely to have accurate photometric redshift estimates or highly likely to be sorted into the correct redshift bin. The neural network classifier is used to remove poor redshift estimates from the sample, and the results are compared to the case when none of the sample is removed. We find that the neural network classifiers are able to improve the figure of merit by ~13% and are able to recover ~25% of the loss in the figure of merit that occurs when a nonrepresentative training sample is used.