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dc.contributor.authorSreejith, Sreevarsha
dc.contributor.authorPereverzyev Jr, Sergiy
dc.contributor.authorKelvin, Lee S
dc.contributor.authorMarleau, Francine R
dc.contributor.authorHaltmeier, Markus
dc.contributor.authorEbner, Judith
dc.contributor.authorBland-Hawthorn, Joss
dc.contributor.authorDriver, Simon P
dc.contributor.authorGraham, Alister W
dc.contributor.authorHolwerda, Benne W
dc.contributor.authorHopkins, Andrew M
dc.contributor.authorLiske, Jochen
dc.contributor.authorLoveday, Jon
dc.contributor.authorMoffett, Amanda J
dc.contributor.authorPimbblet, Kevin A
dc.contributor.authorTaylor, Edward N
dc.contributor.authorWang, Lingyu
dc.contributor.authorWright, Angus H
dc.date.accessioned2018-01-19T15:30:13Z
dc.date.available2018-01-19T15:30:13Z
dc.date.issued2018-03
dc.identifier252096100
dc.identifier696b2de4-c376-4071-b65b-8fc9da3026e4
dc.identifier85045986881
dc.identifier000424977800070
dc.identifier.citationSreejith , S , Pereverzyev Jr , S , Kelvin , L S , Marleau , F R , Haltmeier , M , Ebner , J , Bland-Hawthorn , J , Driver , S P , Graham , A W , Holwerda , B W , Hopkins , A M , Liske , J , Loveday , J , Moffett , A J , Pimbblet , K A , Taylor , E N , Wang , L & Wright , A H 2018 , ' Galaxy And Mass Assembly : automatic morphological classification of galaxies using statistical learning ' , Monthly Notices of the Royal Astronomical Society , vol. 474 , no. 4 , pp. 5232-5258 . https://doi.org/10.1093/mnras/stx2976en
dc.identifier.issn0035-8711
dc.identifier.otherRIS: urn:58D433EB98DBA020C8D5F611A3212EF2
dc.identifier.urihttps://hdl.handle.net/10023/12531
dc.description.abstractWe apply four statistical learning methods to a sample of 7941 galaxies (z < 0.06) from the Galaxy And Mass Assembly survey to test the feasibility of using automated algorithms to classify galaxies. Using 10 features measured for each galaxy (sizes, colours, shape parameters, and stellar mass), we apply the techniques of Support Vector Machines, Classification Trees, Classification Trees with Random Forest (CTRF) and Neural Networks, and returning True Prediction Ratios (TPRs) of 75.8 per cent, 69.0 per cent, 76.2 per cent, and 76.0 per cent, respectively. Those occasions whereby all four algorithms agree with each other yet disagree with the visual classification (‘unanimous disagreement’) serves as a potential indicator of human error in classification, occurring in ∼ 9  per cent of ellipticals, ∼ 9  per cent of little blue spheroids, ∼ 14  per cent of early-type spirals, ∼ 21 per cent of intermediate-type spirals, and ∼ 4  per cent of late-type spirals and irregulars. We observe that the choice of parameters rather than that of algorithms is more crucial in determining classification accuracy. Due to its simplicity in formulation and implementation, we recommend the CTRF algorithm for classifying future galaxy data sets. Adopting the CTRF algorithm, the TPRs of the five galaxy types are : E, 70.1 per cent; LBS, 75.6  per cent; S0–Sa, 63.6  per cent; Sab–Scd, 56.4  per cent, and Sd–Irr, 88.9  per cent. Further, we train a binary classifier using this CTRF algorithm that divides galaxies into spheroid-dominated (E, LBS, and S0–Sa) and disc-dominated (Sab–Scd and Sd–Irr), achieving an overall accuracy of 89.8 per cent. This translates into an accuracy of 84.9 per cent for spheroid-dominated systems and 92.5 per cent for disc-dominated systems.
dc.format.extent27
dc.format.extent30543897
dc.language.isoeng
dc.relation.ispartofMonthly Notices of the Royal Astronomical Societyen
dc.subjectMethods: statisticalen
dc.subjectGalaxies: fundamental parametersen
dc.subjectGalaxies: generalen
dc.subjectGalaxies: structureen
dc.subjectQB Astronomyen
dc.subjectQC Physicsen
dc.subject3rd-DASen
dc.subject.lccQBen
dc.subject.lccQCen
dc.titleGalaxy And Mass Assembly : automatic morphological classification of galaxies using statistical learningen
dc.typeJournal articleen
dc.contributor.institutionUniversity of St Andrews. School of Physics and Astronomyen
dc.identifier.doi10.1093/mnras/stx2976
dc.description.statusPeer revieweden


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