Multiclass Classification of Astronomical Objects in the Galaxy M81 using Machine Learning Techniques

Tapanapong Chuntama, P. Techa-angkoon, C. Suwannajak, Benjamas Panyangam, N. Tanakul
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引用次数: 2

Abstract

Data in astronomy usually contain various classes of astronomical objects. In this study, we explore the application of multiclass classification in classifying astronomical objects in the galaxy MS1. Our objective is to specify machine learning techniques that are best suited to our data and our classification goal. We used the archival data retrieved from the CanadaFrance-Hawaii Telescope (CFHT) data archive. The imaging data were transformed into data tables, then classified based on their visual appearances into five classes, including star, globular cluster, rounded galaxy, elongated galaxy, and fuzzy object. The classified data were used for supervised machine learning model building and testing. We investigated seven classification techniques, including Random Forest, Multilayer Perceptron, Weightless neural network (WiSARD), Deep learning (Weka deep learning), Logistic Regression, Support Vector Machine (SVM), and Multiclass Classifier. Our experiments show that Random Forest and Multilayer Perceptron archived the highest overall performances and are the best-suited model for classifying astronomical objects in the CFHT data of the galaxy M81.
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用机器学习技术对M81星系中天体进行多类分类
天文学中的数据通常包含不同种类的天体。在这项研究中,我们探索了多类分类在MS1星系天体分类中的应用。我们的目标是指定最适合我们的数据和分类目标的机器学习技术。我们使用了从加拿大-法国-夏威夷望远镜(CFHT)数据档案中检索到的档案数据。将成像数据转换成数据表,并根据其视觉外观将其分为5类:恒星、球状星团、圆形星系、细长星系和模糊天体。分类后的数据用于监督式机器学习模型构建和测试。我们研究了7种分类技术,包括随机森林、多层感知器、失重神经网络(WiSARD)、深度学习(Weka深度学习)、逻辑回归、支持向量机(SVM)和多类分类器。我们的实验表明,随机森林和多层感知器在M81星系CFHT数据中具有最高的综合性能,是最适合的天体分类模型。
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