Analysis of a Custom Support Vector Machine for Photometric Redshift Estimation and the Inclusion of Galaxy Shape Information
Evan Jones, J. Singal

TL;DR
This paper introduces SPIDERz, a custom support vector machine package for photometric redshift estimation, compares its performance with other methods across multiple datasets, and investigates the impact of galaxy shape information on redshift accuracy.
Contribution
The paper presents a new SVM-based tool, SPIDERz, and evaluates its effectiveness in estimating galaxy redshifts, including an analysis of the role of galaxy morphology data.
Findings
SPIDERz performs competitively with existing methods on various datasets.
Including galaxy shape information does not significantly improve redshift estimates.
SPIDERz is effective across a wide redshift range up to z < 3.9.
Abstract
Aims: We present a custom support vector machine classification package for photometric redshift estimation, including comparisons with other methods. We also explore the efficacy of including galaxy shape information in redshift estimation. Support vector machines, a type of machine learning, utilize optimization theory and supervised learning algorithms to construct predictive models based on the information content of data in a way that can treat different input features symmetrically. Methods: The custom support vector machine package we have developed is designated SPIDERz and made available to the community. As test data for evaluating performance and comparison with other methods, we apply SPIDERz to four distinct data sets: 1) the publicly available portion of the PHAT-1 catalog based on the GOODS-N field with spectroscopic redshifts in the range , 2) 14365 galaxies…
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