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Volumn 39, Issue 1, 2015, Pages 45-71

Photometric redshift estimation based on data mining with PhotoRApToR

Author keywords

Cosmology: observations; Galaxies: distances and redshifts; Galaxies: photometry; Methods: data analysis; Techniques: photometric

Indexed keywords


EID: 84945301895     PISSN: 09226435     EISSN: 15729508     Source Type: Journal    
DOI: 10.1007/s10686-015-9443-4     Document Type: Article
Times cited : (62)

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