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Data mining techniques on astronomical spectra data – I. Clustering analysis

Haifeng Yang, Chenhui Shi, Jianghui Cai, Lichan Zhou, Yuqing Yang, Xujun Zhao, Yanting He, Jing Hao

2022Monthly Notices of the Royal Astronomical Society32 citationsDOIOpen Access PDF

Abstract

ABSTRACT Clustering is an effective tool for astronomical spectral analysis, to mine clustering patterns among data. With the implementation of large sky surveys, many clustering methods have been applied to tackle spectroscopic and photometric data effectively and automatically. Meanwhile, the performance of clustering methods under different data characteristics varies greatly. With the aim of summarizing astronomical spectral clustering algorithms and laying the foundation for further research, this work gives a review of clustering methods applied to astronomical spectra data in three parts. First, many clustering methods for astronomical spectra are investigated and analysed theoretically, looking at algorithmic ideas, applications, and features. Secondly, experiments are carried out on unified datasets constructed using three criteria (spectra data type, spectra quality, and data volume) to compare the performance of typical algorithms; spectra data are selected from the Large Sky Area Multi-Object Fibre Spectroscopic Telescope (LAMOST) survey and Sloan Digital Sky Survey (SDSS). Finally, source codes of the comparison clustering algorithms and manuals for usage and improvement are provided on GitHub.

Topics & Concepts

Cluster analysisLAMOSTSkyPhysicsData miningTelescopeComputer scienceCURE data clustering algorithmFuzzy clusteringAstrophysicsArtificial intelligenceAstronomical Observations and InstrumentationSpectroscopy and Laser ApplicationsTime Series Analysis and Forecasting
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