Photometric Redshift Estimation for Quasars by Integration of KNN and SVM
Bo Han, Hongpeng Ding, Yanxia Zhang, Yongheng Zhao

TL;DR
This paper introduces a two-stage method combining KNN and SVM to improve photometric redshift estimation for quasars, effectively reducing catastrophic failures and increasing accuracy using SDSS data.
Contribution
A novel two-stage fusion approach integrating KNN and SVM to mitigate catastrophic failure in photometric redshift estimation for quasars.
Findings
Significantly reduces catastrophic failure in redshift estimation.
Improves accuracy with higher percentage of predictions within acceptable error ranges.
Achieves lower RMS error compared to KNN alone.
Abstract
The massive photometric data collected from multiple large-scale sky surveys offer significant opportunities for measuring distances of celestial objects by photometric redshifts. However, catastrophic failure is still an unsolved problem for a long time and exists in the current photometric redshift estimation approaches (such as -nearest-neighbor). In this paper, we propose a novel two-stage approach by integration of -nearest-neighbor (KNN) and support vector machine (SVM) methods together. In the first stage, we apply KNN algorithm on photometric data and estimate their corresponding z. By analysis, we find two dense regions with catastrophic failure, one in the range of z, the other in the range of z. In the second stage, we map the photometric input pattern of points falling into the two ranges from original…
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