Applying machine learning to catalogue matching in astrophysics


Autoria(s): Rohde, D. J.; Drinkwater, M. J.; Gallagher, M. R.; Downs, T.; Doyle, M. T.
Contribuinte(s)

A. C. Fabian

Data(s)

01/01/2005

Resumo

We present the results of applying automated machine learning techniques to the problem of matching different object catalogues in astrophysics. In this study, we take two partially matched catalogues where one of the two catalogues has a large positional uncertainty. The two catalogues we used here were taken from the H I Parkes All Sky Survey (HIPASS) and SuperCOSMOS optical survey. Previous work had matched 44 per cent (1887 objects) of HIPASS to the SuperCOSMOS catalogue. A supervised learning algorithm was then applied to construct a model of the matched portion of our catalogue. Validation of the model shows that we achieved a good classification performance (99.12 per cent correct). Applying this model to the unmatched portion of the catalogue found 1209 new matches. This increases the catalogue size from 1887 matched objects to 3096. The combination of these procedures yields a catalogue that is 72 per cent matched.

Identificador

http://espace.library.uq.edu.au/view/UQ:75873

Idioma(s)

eng

Publicador

Oxford University Press

Palavras-Chave #Astronomical Data Bases : Miscellaneous #Catalogues #Astronomy & Astrophysics #Astronomical Data Bases #Supercosmos Sky Survey #Neural-networks #Hipass Catalog #Classification #Astronomy
Tipo

Journal Article