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Data-Rich Astronomy: Mining Sky Surveys with PhotoRApToR

Published online by Cambridge University Press:  01 July 2015

Stefano Cavuoti
Affiliation:
INAF - Astronomical Observatory of Capodimonte, I-80131, Napoli, Italy email: cavuoti@na.astro.it
Massimo Brescia
Affiliation:
INAF - Astronomical Observatory of Capodimonte, I-80131, Napoli, Italy email: cavuoti@na.astro.it
Giuseppe Longo
Affiliation:
Dept. of Physics, Naples University, Box I-80126 Napoli, Italy
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Abstract

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In the last decade a new generation of telescopes and sensors has allowed the production of a very large amount of data and astronomy has become a data-rich science. New automatic methods largely based on machine learning are needed to cope with such data tsunami. We present some results in the fields of photometric redshifts and galaxy classification, obtained using the MLPQNA algorithm available in the DAMEWARE (Data Mining and Web Application Resource) for the SDSS galaxies (DR9 and DR10). We present PhotoRApToR (Photometric Research Application To Redshift): a Java based desktop application capable to solve regression and classification problems and specialized for photo-z estimation.

Type
Contributed Papers
Copyright
Copyright © International Astronomical Union 2015 

References

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