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Automated Spectral Classification of Galaxies using Machine Learning Approach on Alibaba Cloud AI platform (PAI)

机译:使用机器学习方法在阿里巴巴云AI平台(PAI)自动化光谱分类

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Automated spectral classification is an active research area in astronomy at the age of data explosion. While new generation of sky survey telescopes (e.g. LAMOST and SDSS) produce huge amount of spectra, automated spectral classification is highly required to replace the current model fitting approach with human intervention. Galaxies, and especially active galactic nucleus (AGNs), are important targets of sky survey programs. Efficient and automated methods for galaxy spectra classification is the basis of systematic study on physical properties and evolution of galaxies. To address the problem, in this paper we carry out an experiment on Alibaba Cloud AI plaform (PAI)~1 to explore automated galaxy spectral classification using machine learning approach. Supervised machine learning algorithms (Logistic Regression, Random Forest and Linear SVM) were performed on a dataset consist of 10000 galaxy spectra of SDSS DR14, and the classification results of which are compared and discussed. These galaxy spectra each has a subclass tag (i.e. AGNs, Starburst, Starforming, and etc.) that we use as training labels.
机译:自动化光谱分类是数据爆炸时代天文学的活跃研究区域。虽然新一代天空调查望远镜(例如拉莫斯特和SDSS)产生大量光谱,但是自动化光谱分类非常需要用人类干预取代当前的模型配件方法。星系,特别是活跃的银核(AGNS)是天空调查计划的重要目标。 Galaxy Spectra分类的高效和自动化方法是系统性质和星系演变的系统研究的基础。为了解决问题,在本文中,我们在阿里巴巴云AI PLAFORM(PAI)〜1上进行了实验,探讨了使用机器学习方法的自动化星系光谱分类。在数据集上执行监督机器学习算法(Logistic回归,随机森林和线性SVM)由SDSS DR14的10000个星系光谱组成,并将其进行比较和讨论。这些星系光谱各自具有我们用作训练标签的子类标签(即AGNS,StarBurst,Starforming等)。

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