Deep learning based photometric redshifts for the Kilo-Degree Survey Bright Galaxy Sample
Abstract
In cosmological analyses, precise redshift determination remains pivotal for understanding cosmic evolution. However, with only a fraction of galaxies having spectroscopic redshifts (spec-zs), the challenge lies in estimating redshifts for a larger number. To address this, photometry-based redshift (photo-z) estimation, employing machine learning algorithms, is a viable solution. Identifying the limitations of previous methods, this study focuses on implementing deep learning (DL) techniques within the Kilo-Degree Survey (KiDS) Bright Galaxy Sample for more accurate photo-z estimations. Comparing our new DL-based model against prior `shallow' neural networks, we showcase improvements in redshift accuracy. Our model gives mean photo-z bias z= 10-3 and scatter SMAD( z)=0.016, where z = (zphot-zspec)/(1+zspec). This research highlights the promising role of DL in revolutionizing photo-z estimation.
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