MLZ: Machine Learning for photo-Z
Abstract
The parallel Python framework MLZ (Machine Learning and photo-Z) computes fast and robust photometric redshift PDFs using Machine Learning algorithms. It uses a supervised technique with prediction trees and random forest through TPZ that can be used for a regression or a classification problem, or a unsupervised methods with self organizing maps and random atlas called SOMz. These machine learning implementations can be efficiently combined into a more powerful one resulting in robust and accurate probability distributions for photometric redshifts.
- Publication:
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Astrophysics Source Code Library
- Pub Date:
- March 2014
- Bibcode:
- 2014ascl.soft03003C
- Keywords:
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- Software