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An intuitive clustering algorithm for spherical data with application to extrasolar planets

机译:球面数据的直观聚类算法及其在太阳系外行星上的应用

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This paper proposes an intuitive clustering algorithm capable of automatically self-organizing data groups based on the original data structure. Comparisons between the propopsed algorithm and EM [1] and spherical k-means [7] algorithms are given. These numerical results show the effectiveness of the proposed algorithm, using the correct classification rate and the adjusted Rand index as evaluation criteria [5,6]. In 1995, Mayor and Queloz announced the detection of the first extrasolar planet (exoplanet) around a Sun-like star. Since then, observational efforts of astronomers have led to the detection of more than 1000 exoplanets. These discoveries may provide important information for understanding the formation and evolution of planetary systems. The proposed clustering algorithm is therefore used to study the data gathered on exoplanets. Two main implications are also suggested: (1) there are three major clusters, which correspond to the exoplanets in the regimes of disc, ongoing tidal and tidal interactions, respectively, and (2) the stellar metallicity does not play a key role in exoplanet migration.
机译:本文提出了一种直观的聚类算法,该算法能够基于原始数据结构自动自组织数据组。给出了已推广算法与EM [1]和球形k均值[7]算法之间的比较。这些数值结果表明,使用正确的分类率和调整后的兰德指数作为评估标准,该算法是有效的[5,6]。 1995年,市长和奎洛兹宣布探测到第一个太阳系恒星周围的太阳系外行星(系外行星)。从那时起,天文学家的观测工作已导致探测到1000多颗系外行星。这些发现可能为理解行星系统的形成和演化提供重要信息。因此,提出的聚类算法用于研究系外行星收集的数据。还提出了两个主要含义:(1)有三个主要的星团,分别对应于盘状系统中的系外行星,正在进行的潮汐和潮汐相互作用;(2)恒星的金属性在系外行星中不起关键作用移民。

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