论文标题

通过高斯混合模型选择揭示新的高红移类星体种群

Revealing new high redshift quasar populations through Gaussian mixture model selection

论文作者

Wagenveld, J. D., Saxena, A., Duncan, K. J., Röttgering, H. J. A., Zhang, M.

论文摘要

We present a novel method to identify candidate high redshift quasars (HzQs; ($z\gtrsim5.5$), which are unique probes of supermassive black hole growth in the early Universe, from large area optical/infrared photometric surveys. Using Gaussian Mixture Models to construct likelihoods and incorporate informed priors based on population statistics, our method uses a Bayesian framework to assign posterior probabilities that与污染物之间的区分,我们还包括深度无线电数据,以获取文献中的现有HZQ。 HZQ和污染物,我们发现概率方法的功效高于传统的颜色,将所接受的污染物的比例降低了86%,同时将类似的HZQ作为测试,我们将我们的方法应用于泛星数数据(PS1)数据(PS1)源源在HetDex Spring Field and Sky of Sky ins of Sky and cos cos in 400 sos cos in 4 0000 s。 Lofar两米的Sky Nublice Data Release 1(Lots DR1)。光度颜色$ i-Z = 1.4 $,在基于颜色的HZQ时,通常位于通常的探测区域外,这表明了我们概率的HZQ选择方法在选择更完整的HZQ样品方面的功效,这在大型现有和即将出现的光度数据集上时会有希望。

We present a novel method to identify candidate high redshift quasars (HzQs; ($z\gtrsim5.5$), which are unique probes of supermassive black hole growth in the early Universe, from large area optical/infrared photometric surveys. Using Gaussian Mixture Models to construct likelihoods and incorporate informed priors based on population statistics, our method uses a Bayesian framework to assign posterior probabilities that differentiate between HzQs and contaminating sources. We additionally include deep radio data to obtain informed priors. Using existing HzQ data in the literature, we set a posterior threshold that accepts ${\sim}90\%$ of known HzQs while rejecting $>99\%$ of contaminants such as dwarf stars or lower redshift galaxies. Running the probability selection on test samples of simulated HzQs and contaminants, we find that the efficacy of the probability method is higher than traditional colour cuts, decreasing the fraction of accepted contaminants by 86% while retaining a similar fraction of HzQs. As a test, we apply our method to the Pan-STARRS Data Release 1 (PS1) source catalogue within the HETDEX Spring field area on the sky, covering 400 sq. deg. and coinciding with deep radio data from the LOFAR Two-metre Sky Survey Data Release 1 (LoTSS DR1). From an initial sample of ${\sim}5\times10^5$ sources in PS1, our selection shortlists 251 candidate HzQs, which are further reduced to 63 after visual inspection. Shallow spectroscopic follow-up of 13 high probability HzQs resulted in the confirmation of a previously undiscovered quasar at $z=5.66$ with photometric colours $i-z = 1.4$, lying outside the typically probed regions when selecting HzQs based on colours. This discovery demonstrates the efficacy of our probabilistic HzQ selection method in selecting more complete HzQ samples, which holds promise when employed on large existing and upcoming photometric data sets.

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