论文标题
使用光谱镜最近的邻居增强光度红移估计值
Augmenting photometric redshift estimates using spectroscopic nearest neighbours
论文作者
论文摘要
由于银河系聚类的结果,在天空平面上观察到的紧密星系应与与它们的角度分离成反比的概率相关。原则上,当某些相邻对象可用于光谱红移时,该信息可用于改善光度红移估计。但是,根据调查的深度,这种角相关性通过偶然的预测降低。在这项工作中,我们实施了一个深入学习模型,以通过解决分类任务来区分明显的和真实的邻居。我们采用了图形神经网络体系结构,将光度法,光谱和相邻星系之间的空间信息绑在一起。我们在Vipers Galaxy调查的数据上训练并验证了算法,该算法还提供了基于光谱能量分布的光度红移。该模型使一对星系成为真正的角度邻居的置信度,使我们能够以概率的方式脱离机会叠加。当排除无法确定物理伴侣的对象时,所有光度红移质量指标都显着改善,证实其估计值较低。对于我们的典型测试配置,该算法识别包含〜75%高质量光度红移的子集,为此,色散降低了多达50%(从0.08到0.04),而异常值的分数则从3%降低到0.8%。此外,我们表明,具有最高检测概率的角邻域的光谱红移提供了对目标星系的红移的极好估计,与相应的模板拟合估计值相当甚至更好。
As a consequence of galaxy clustering, close galaxies observed on the plane of the sky should be spatially correlated with a probability that is inversely proportional to their angular separation. In principle, this information can be used to improve photometric redshift estimates when spectroscopic redshifts are available for some of the neighbouring objects. Depending on the depth of the survey, however, this angular correlation is reduced by chance projections. In this work, we implement a deep-learning model to distinguish between apparent and real angular neighbours by solving a classification task. We adopted a graph neural network architecture to tie together photometry, spectroscopy, and the spatial information between neighbouring galaxies. We trained and validated the algorithm on the data of the VIPERS galaxy survey, for which photometric redshifts based on spectral energy distribution are also available. The model yields a confidence level for a pair of galaxies to be real angular neighbours, enabling us to disentangle chance superpositions in a probabilistic way. When objects for which no physical companion can be identified are excluded, all photometric redshift quality metrics improve significantly, confirming that their estimates were of lower quality. For our typical test configuration, the algorithm identifies a subset containing ~75% high-quality photometric redshifts, for which the dispersion is reduced by as much as 50% (from 0.08 to 0.04), while the fraction of outliers reduces from 3% to 0.8%. Moreover, we show that the spectroscopic redshift of the angular neighbour with the highest detection probability provides an excellent estimate of the redshift of the target galaxy, comparable to or even better than the corresponding template-fitting estimate.