Large-scale surveys make huge amounts of photometric data available. Because of the sheer amount of objects, spectral data cannot be obtained for all of them. Therefore, it is important to devise techniques for reliably estimating physical properties of objects from photometric information alone. These estimates are needed to automatically identify interesting objects worth a follow-up investigation as well as to produce the required data for a statistical analysis of the space covered by a survey. We argue that machine learning techniques are suitable to compute these estimates accurately and efficiently. This study promotes a feature selection algorithm, which selects the most informative magnitudes and colours for a given task of estimat...
In the last decade a new generation of telescopes and sensors has allowed the production of a very l...
A fundamental challenge for wide-field imaging surveys is obtaining follow-up spectroscopic obser-va...
Abstract. In the last decade a new generation of telescopes and sensors has allowed the production o...
Context. The explosion of data in recent years has generated an increasing need for new analysis tec...
Star formation rates (SFRs) are crucial to constrain theories of galaxy formation and evolution. SFR...
Data in astronomy is rapidly growing with upcoming surveys producing 30 TB of images per night. High...
Context. The explosion of data in recent years has generated an increasing need for new analysis tec...
We apply one of the lazy learning methods, the k-nearest neighbor (kNN) algorithm, to estimate the p...
Photometric redshifts (photo-z) are fundamental in galaxy surveys to address different topics, from ...
Photometric redshifts (photo-z) are fundamental in galaxy surveys to address different topics, from ...
We present a catalog of quasars with their corresponding redshifts derived from the photometric Kilo...
We calculate photometric redshifts from the Sloan Digital Sky Survey Main Galaxy Sample, theGalaxy E...
The Southern Photometric Local Universe Survey (S-PLUS) is a novel project that aims to map the Sout...
Astronomy has entered the big data era and Machine Learning based methods have found widespread use ...
In the last decade a new generation of telescopes and sensors has allowed the production of a very l...
A fundamental challenge for wide-field imaging surveys is obtaining follow-up spectroscopic obser-va...
Abstract. In the last decade a new generation of telescopes and sensors has allowed the production o...
Context. The explosion of data in recent years has generated an increasing need for new analysis tec...
Star formation rates (SFRs) are crucial to constrain theories of galaxy formation and evolution. SFR...
Data in astronomy is rapidly growing with upcoming surveys producing 30 TB of images per night. High...
Context. The explosion of data in recent years has generated an increasing need for new analysis tec...
We apply one of the lazy learning methods, the k-nearest neighbor (kNN) algorithm, to estimate the p...
Photometric redshifts (photo-z) are fundamental in galaxy surveys to address different topics, from ...
Photometric redshifts (photo-z) are fundamental in galaxy surveys to address different topics, from ...
We present a catalog of quasars with their corresponding redshifts derived from the photometric Kilo...
We calculate photometric redshifts from the Sloan Digital Sky Survey Main Galaxy Sample, theGalaxy E...
The Southern Photometric Local Universe Survey (S-PLUS) is a novel project that aims to map the Sout...
Astronomy has entered the big data era and Machine Learning based methods have found widespread use ...
In the last decade a new generation of telescopes and sensors has allowed the production of a very l...
A fundamental challenge for wide-field imaging surveys is obtaining follow-up spectroscopic obser-va...
Abstract. In the last decade a new generation of telescopes and sensors has allowed the production o...