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引用次数: 0
摘要
我们提出了一种机器学习(ML)方法,用于在Apache Point Observatory (MaNGA)调查中对椭圆星系的运动剖面进行分类。以往利用机器学习对星系光谱数据进行分类的研究为星系形态学分类提供了有价值的见解。本文利用积分场光谱(IFS)对2624个MaNGA椭圆星系的一维速度色散(VD)分布进行了分类,研究了它们的运动学特性。我们总共使用了1266个MaNGA VD档案,并结合了无监督和有监督的学习技术。无监督K-means算法将VD轮廓分为四类:平坦、下降、上升和不规则。使用视觉标签训练袋装决策树分类器(TreeBagger)监督集成,在训练集上达到100%的准确率,在测试集上达到88%的准确率。我们的分析表明,大多数(68%)的日本椭圆星系呈现平坦的VD轮廓,这需要进一步研究暗物质问题的含义。
Classifying MaNGA Velocity Dispersion Profiles by Machine Learning
We present a machine learning (ML) approach for classifying kinematic profiles of elliptical galaxies in the Mapping Nearby Galaxies at Apache Point Observatory (MaNGA) survey. Previous studies employing ML to classify spectral data of galaxies have provided valuable insights into morphological galaxy classification. This study aims to enhance the understanding of galaxy kinematics by leveraging ML. The kinematics of 2,624 MaNGA elliptical galaxies are investigated using integral field spectroscopy (IFS) by classifying their one-dimensional velocity dispersion (VD) profiles. We utilised a total of 1,266 MaNGA VD profiles and employed a combination of unsupervised and supervised learning techniques. The unsupervised K-means algorithm classifies VD profiles into four categories: flat, decline, ascend, and irregular. A bagged decision trees classifier (TreeBagger) supervised ensemble is trained using visual tags, achieving 100% accuracy on the training set and 88% accuracy on the test set. Our analysis identifies the majority (68%) of MaNGA elliptical galaxies presenting flat VD profiles, which requires further investigation into the implications of the Dark Matter problem.