Galaxy And Mass Assembly: Automatic Morphological Classification of Galaxies Using Statistical Learning
Sreevarsha Sreejith, Sergiy Pereverzyev Jr., Lee S. Kelvin, Francine, Marleau, Markus Haltmeier, Judith Ebner, Joss Bland-Hawthorn, Simon P., Driver, Alister W. Graham, Benne W. Holwerda, A. M. Hopkins, J. Liske, Jon, Loveday, Amanda J. Moffett, K. A. Pimbblet, Edward N. Taylor

TL;DR
This study evaluates four statistical learning algorithms for automated galaxy classification using GAMA survey data, finding that parameter choice impacts accuracy more than the algorithm itself, and recommends the CTRF method for future use.
Contribution
It introduces a comparative analysis of four machine learning techniques for galaxy classification and proposes CTRF as the most effective method based on accuracy and simplicity.
Findings
Support Vector Machines achieved 75.8% TPR
Classification Trees with Random Forest achieved 76.2% TPR
The CTRF algorithm is recommended for future galaxy classification tasks
Abstract
We apply four statistical learning methods to a sample of galaxies () from the Galaxy and Mass Assembly (GAMA) survey to test the feasibility of using automated algorithms to classify galaxies. Using features measured for each galaxy (sizes, colours, shape parameters \& stellar mass) we apply the techniques of Support Vector Machines (SVM), Classification Trees (CT), Classification Trees with Random Forest (CTRF) and Neural Networks (NN), returning True Prediction Ratios (TPRs) of , , and 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 of ellipticals, of Little Blue Spheroids, of early-type spirals, of…
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