Estimating Photometric Redshift from Mock Flux for CSST Survey by using Weighted Random Forest
Junhao Lu, Zhijian Luo, Zhu Chen, Liping Fu, Wei Du, Yan Gong, Yicheng, Li, Xian-Min Meng, Zhirui Tang, Shaohua Zhang, Chenggang Shu, Xingchen Zhou, and Zuhui Fan

TL;DR
This paper demonstrates that weighted Random Forest can accurately estimate photometric redshifts from simulated galaxy flux data, outperforming traditional template-fitting methods, and provides insights into feature importance and confidence estimation.
Contribution
The study introduces a weighted Random Forest approach for photometric redshift estimation using simulated CSST data, improving accuracy and confidence over existing methods.
Findings
Weighted RF achieves σ_NMAD=0.025 and outlier fraction=2.045%.
Feature importance reflects galaxy spectral break features.
Confidence indices help reduce outlier sources.
Abstract
Accurate estimation of photometric redshifts (photo-) is crucial in studies of both galaxy evolution and cosmology using current and future large sky surveys. In this study, we employ Random Forest (RF), a machine learning algorithm, to estimate photo- and investigate the systematic uncertainties affecting the results. Using galaxy flux and color as input features, we construct a mapping between input features and redshift by using a training set of simulated data, generated from the Hubble Space Telescope Advanced Camera for Surveys (HST-ACS) and COSMOS catalogue, with the expected instrumental effects of the planned China Space Station Telescope (CSST). To improve the accuracy and confidence of predictions, we incorporate inverse variance weighting and perturb the catalog using input feature errors. Our results show that weighted RF can achieve a photo- accuracy of $\rm…
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Taxonomy
TopicsGalaxies: Formation, Evolution, Phenomena · Remote Sensing in Agriculture · Astronomical Observations and Instrumentation
