Exoplanets Identification and Clustering with Machine Learning Methods

Yucheng Jin, Lanyi Yang, Chia-En Chiang
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Abstract

The discovery of habitable exoplanets has long been a heated topic in astronomy. Traditional methods for exoplanet identification include the wobble method, direct imaging, gravitational microlensing, etc., which not only require a considerable investment of manpower, time, and money, but also are limited by the performance of astronomical telescopes. In this study, we proposed the idea of using machine learning methods to identify exoplanets. We used the Kepler dataset collected by NASA from the Kepler Space Observatory to conduct supervised learning, which predicts the existence of exoplanet candidates as a three-categorical classification task, using decision tree, random forest, naïve Bayes, and neural network; we used another NASA dataset consisted of the confirmed exoplanets data to conduct unsupervised learning, which divides the confirmed exoplanets into different clusters, using k-means clustering. As a result, our models achieved accuracies of 99.06%, 92.11%, 88.50%, and 99.79%, respectively, in the supervised learning task and successfully obtained reasonable clusters in the unsupervised learning task.
用机器学习方法识别和聚类系外行星
长期以来,发现可居住的系外行星一直是天文学的热门话题。传统的系外行星识别方法包括摆动法、直接成像、引力微透镜等,这些方法不仅需要投入大量的人力、时间和金钱,而且受天文望远镜性能的限制。在这项研究中,我们提出了使用机器学习方法来识别系外行星的想法。我们利用NASA从开普勒空间天文台收集的开普勒数据集进行监督学习,利用决策树、随机森林、naïve贝叶斯和神经网络来预测系外行星候选者的存在性,并将其作为一个三分类任务;我们使用另一个由已确认的系外行星数据组成的NASA数据集进行无监督学习,使用k-means聚类将已确认的系外行星划分为不同的集群。结果表明,我们的模型在有监督学习任务中的准确率分别为99.06%、92.11%、88.50%和99.79%,在无监督学习任务中成功获得了合理的聚类。
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