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Merged or monolithic? Using machine-learning to reconstruct the dynamical history of simulated star clusters

机译:合并还是整体?使用机器学习重建模拟星团的动力学历史

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Context. Machine-learning (ML) solves problems by learning patterns from data with limited or no human guidance. In astronomy, ML is mainly applied to large observational datasets, e.g. for morphological galaxy classification. Aims. We apply ML to gravitational N-body simulations of star clusters that are either formed by merging two progenitors or evolved in isolation, planning to later identify globular clusters (GCs) that may have a history of merging from observational data. Methods. We create mock-observations from simulated GCs, from which we measure a set of parameters (also called features in the machine-learning field). After carrying out dimensionality reduction on the feature space, the resulting datapoints are fed in to various classification algorithms. Using repeated random subsampling validation, we check whether the groups identified by the algorithms correspond to the underlying physical distinction between mergers and monolithically evolved simulations. Results. The three algorithms we considered (C5.0 trees, k-nearest neighbour, and support-vector machines) all achieve a test misclassification rate of about 10% without parameter tuning, with support-vector machines slightly outperforming the others. The first principal component of feature space correlates with cluster concentration. If we exclude it from the regression, the performance of the algorithms is only slightly reduced.
机译:上下文。机器学习(ML)通过在有限或没有人工指导的情况下从数据中学习模式来解决问题。在天文学中,机器学习主要应用于大型观测数据集,例如用于形态学银河分类。目的我们将ML应用于恒星团的重力N体模拟,该恒星团要么是通过合并两个祖细胞形成的,要么是孤立地演化而成的,并计划在以后从观测数据中识别出具有合并历史的球状星团(GC)。方法。我们从模拟的GC创建模拟观察,从中我们测量一组参数(在机器学习字段中也称为特征)。在特征空间上进行降维后,将得到的数据点输入到各种分类算法中。使用重复的随机子抽样验证,我们检查算法确定的组是否对应于合并与整体演化模拟之间的基础物理区别。结果。我们考虑的三种算法(C5.0树,k近邻算法和支持向量机)在不进行参数调整的情况下,均达到了约10%的测试错误分类率,而支持向量机的性能略优于其他算法。特征空间的第一个主要成分与簇集中相关。如果我们从回归中排除它,则算法的性能只会稍微降低。

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