Photometric Redshift Estimation for CSST Survey with LSTM Neural Networks
Zhijian Luo, Yicheng Li, Junhao Lu, Zhu Chen, Liping Fu, Shaohua, Zhang, Hubing Xiao, Wei Du, Yan Gong, Chenggang Shu, Wenwen Ma, Xianmin Meng,, Xingchen Zhou, Zuhui Fan

TL;DR
This paper introduces an LSTM-based deep learning model for photometric redshift estimation that outperforms traditional methods by requiring only flux measurements and achieving higher accuracy with fewer outliers.
Contribution
The study presents a novel LSTM neural network approach for photo-$z$ estimation that simplifies input requirements and improves accuracy over existing machine learning and template fitting methods.
Findings
LSTM model reduces outliers to one-third of MLP model
Achieves two-thirds the $ m \sigma_{NMAD}$ of MLP
Requires only flux measurements as input
Abstract
Accurate estimation of photometric redshifts (photo-s) is crucial for cosmological surveys. Various methods have been developed for this purpose, such as template fitting methods and machine learning techniques, each with its own applications, advantages, and limitations. In this study, we propose a new approach that utilizes a deep learning model based on Recurrent Neural Networks (RNN) with Long Short-Term Memory (LSTM) to predict photo-. Unlike many existing machine learning models, our method requires only flux measurements from different observed filters as input. The model can automatically learn the complex relationships between the flux data across different wavelengths, eliminating the need for manually extracted or derived input features, thereby providing precise photo- estimates. The effectiveness of our proposed model is evaluated using simulated data from the…
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Taxonomy
TopicsCalibration and Measurement Techniques · Astronomical Observations and Instrumentation · Infrared Target Detection Methodologies
