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Comparative clustering analysis of variable stars in the Hipparcos, OGLE Large Magellanic Cloud, and CoRoT exoplanet databases

机译:Hipparcos,OGLE大麦哲伦星云和CoRoT系外行星数据库中可变恒星的比较聚类分析

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Context. Discovery of new variability classes in large surveys using multivariate statistics techniques such as clustering, relies heavily on the correct understanding of the distribution of known classes as point processes in parameter space. Aims. Our objective is to analyze the correspondence between the classical stellar variability types and the clusters found in the distribution of light curve parameters and colour indices of stars in the CoRoT exoplanet sample. The final aim is to help in the identification on new types of variability by first identifying the well known variables in the CoRoTsample. Methods. We apply unsupervised classification algorithms to identify clusters of variable stars from modes of the probability density distribution. We use reference variability databases (Hipparcos and OGLE) as a framework to calibrate the clustering methodology. Furthermore, we use the results from supervised classification methods to interpret the resulting clusters. Results. We interpret the clusters in the Hipparcos and OGLE LMC databases in terms of large-amplitude radial pulsators in the classical instability strip and of various types of eclipsing binaries. The Hipparcos data also provide clear distributions for low-amplitude nonradial pulsators. We show that the preselection of targets for the CoRoT exoplanet programme results in a completely different probability density landscape than the OGLE data, the interpretation of which involves mainly classes of low-amplitude variability in main-sequence stars. Our findings will be incorporated to improve the supervised classification used in the CoRoT catalogue production, once the existence of new classes or subtypes will be confirmed from complementary spectroscopic observations. Key words: methods: statistical - methods: data analysis - stars: binaries: eclipsing - stars: variables: general - stars: statistics - techniques: photometric
机译:上下文。使用多元统计技术(例如聚类)在大型调查中发现新的可变性类别在很大程度上取决于对已知类别的分布的正确理解,这些已知类别是参数空间中的点过程。目的我们的目标是分析CoRoT系外行星样品中经典恒星变异类型与光曲线参数分布和恒星颜色指数中发现的星团之间的对应关系。最终目标是通过首先识别CoRoTsample中众所周知的变量来帮助识别新型的变异性。方法。我们应用无监督分类算法从概率密度分布的模式中识别可变星的星团。我们使用参考变异性数据库(Hipparcos和OGLE)作为框架来校准聚类方法。此外,我们使用监督分类方法的结果来解释结果聚类。结果。我们根据经典不稳定性带中的大振幅径向脉动波和各种类型的日蚀二值来解释Hipparcos和OGLE LMC数据库中的簇。 Hipparcos数据还为低振幅非径向波轮提供了清晰的分布。我们显示,对CoRoT系外行星程序进行目标预选会导致与OGLE数据完全不同的概率密度格局,其解释主要涉及主序星中的低振幅变异性。一旦从互补光谱学观察中确认了新类别或亚型的存在,我们的发现将被纳入以改进CoRoT目录生产中使用的监督分类。关键词:方法:统计-方法:数据分析-星:二元:蚀-星:变量:一般-星:统计-技术:光度

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