A tutorial on classification and photometric redshift regression of astronomical sources using supervised machine learning techniques.
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Updated
Nov 12, 2021 - Jupyter Notebook
A tutorial on classification and photometric redshift regression of astronomical sources using supervised machine learning techniques.
A repository containing our code for our paper, "Photometric identification of compact galaxies, stars and quasars using multiple neural networks".
Using machine learning to predict the mass of quasar supermassive black holes
Evolutionary spectrum inversion and analysis
Separating Stars from Quasars: Machine Learning Investigation Using Photometric Data
Exploratory data analysis in Python of the quasar candidates catalog by Richards et al., ApJS 219 (2015).
Python code to attempt to identify high-redshift quasars using their infrared colours. The program uses a decision tree classifier to learn the quasar and dwarf star distributions in the selected colour spaces, and a subset of new data is used to trial run the code.
Analysis of the SINFONI integral-field data for powerful radio-quasar 3C 297
Github repository for machine learning application on quasar selection and the discrimination between stars and galaxies.
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